SlideShare uma empresa Scribd logo
1 de 67
Virtual Knowledge Studio (VKS)



        Social (Web) Network
         Analysis and Health
           Communication
Asso. Prof. Dr. Han Woo PARK
CyberEmotions Research
Institute
Dept. of Media & Communication
YeungNam University
214-1 Dae-dong, Gyeongsan-si,
Gyeongsangbuk-do 712-749
Republic of Korea
http://www.hanpark.net
http://eastasia.yu.ac.kr
http://asia-triplehelix.org
Health Networks Research Today
• Effect of social networks on health status

   – Social support (both perceived and actual)
   – Social influence (such as attitudes or norms)
   – Access to resources (money, occupations, information, or
     knowledge)
   – Social involvement (both exclusion and inclusion)
   – Transmission of disease or disease-related factors (such as
     human immuno-deficiency virus and acquired immune
     deficiency syndrome (HIV/AIDS), mucus, and secondhand
     cigarette smoke)

     * Sharon L. Brennan (2012). Health Networks. Barnett, G. A. (ed). Encyclopedia of
     Social Networks. Thousands Oaks, CA: Sage Publisher. pp. 346-351.
History of SNA




                 Borgatti et al (2009)




                                     3
Health Networks Research Today
• Theoretical rationale
   – People are interconnected, and thus their health is
     interconnected
   – Selection and homophily are two major concepts in
     health-related social network research.
   – Early studies focused on mortality and morbidity

• Three main areas covered by social and communication
  scientists
- The conceptulization of health and illness
- The study of their measurement and social distribution
- The explanation of patterns of health and illness

      * Sharon L. Brennan (2012). Health Networks. Barnett, G. A. (ed). Encyclopedia of
      Social Networks. Thousands Oaks, CA: Sage Publisher. pp. 346-351.
You and Your Friend’s Friend’s Friends
• NY Times
6
7
8
Comparison with other methods




                  Scott (1991), p.3
Borgatti et al (2009) 10
Types of SNA data
• Whole-network method
- Measuring all connections with others in
  group
- Population

• Ego-centric method
- Snowballing
- Sample

• A combined method
12
Hogan (2008)
Bi-linked network of politically active
A-list Korean citizen blogs (July 2005)
                                     URI=Centre
                                     DLP=Left
                                     GNP=Right




          Just A-list blogs exchanging links with politicians
Group, group member, liaison, isolates, dyad, tree
                                     Richards (1995)
* Co-inlink : a link to two
different nodes from a third
node
* Co-outlink : A link from two
different nodes to a third node




              Björneborn (2003)
관계모양별 네트워크 유형

                                  C


              B            C      B
C         B                                      A


      A             A             A      B               C


D         E
                    D             D          D       E


                    E             E



    < 스타형 >       <Y 형 >       < 체인형 >       < 서클형 >
관계모양별 네트워크 유형
                                               중심 노드




 < 스타형 >          <Y 형 >   < 체인형 >   < 서클형 >
 중심화                                  비중심화



 노드 (node): 사람

 선 (line): 사람 간 커뮤니케이션의 잠재적인 채널       Borgatti et al (2009)
바베라스와 리빗의 실험 결과


 1) 문제해결의 시간적 측면
 스타형 , Y 형 > 체인형 , 서클형   ☞ 중심화 성향 (centralized)


 2) 메시지 교환의 수

 서클형 > 체인형 > 스타형 , Y 형


 3) 참여한 사람들의 만족도

 서클형 > 체인형 > Y 형 > 스타형
바베라스와 리빗의 실험 결과


 4) 에러 (error) 발생
 스타형 , Y 형 , 체인형 < 서클형 ☞ 에러 수정의 서클형에서 빈번


 5) 자발적 리더발생 확률

 서클형 > 체인형 > Y 형 > 스타형


 6) 성과 향상

 서클형 > 스타형 , Y 형 , 체인형
구조적 공백 / 틈새 / 혈


 A         B      A       B




      C               C
구조적 공백 / 틈새 / 혈




       open                       closed


  왼쪽에 있는 Ego- 네트워크 : 많은 구조적 공백

  오른쪽에 있는 Ego- 네트워크 : 적은 구조적 공백
                                           Borgatti et al (2009)
구조적 공백

버
    기업에서 승진을 잘 하는 사람이 실제로 연결망에
    서 좋은 위치에 놓인 사람이라고 주장
트




       나                나
Centrality Indicators

       지역단장                         연결중심성 : 직접적으로 맺

                                     은 관계가 많은 마당발
             교육팀장
신입가족

                                  매개중심성 : 브로커 , 중개자 ,
       매니저      부사장
                      부회장   회장
                                     통제자 , 수문장


지점장           본부장                 근접성 : 조직 구성원과 가장

                                     빠르게 의사소통하는 확산자 ,
       팀장

                                     방송국
조직내 확산을 연결 / 차단할 적임자는 ?

                                        연결성   매개성     근접성
       지역단장
                                 신입가족    4    0.83    52.94

                                 지역단장    3    0.00    50.00
             교육팀장
신입가족
                                 교육팀장    5    8.33    64.29

                                 매니저     6    3.67    60.00
       매니저      부사장
                      부회장   회장
                                 지점장     4    0.83    52.94

                                 팀장      3    0.00    50.00
지점장           본부장
                                 본부장     5    8.33    64.29

                                 부사장     3    14.00   60.00
       팀장
                                 부회장     2    8.00    42.86

                                 회장      1    0.00    31.03
NodeXL




Cluster Coefficient:
' 친구의 친구를 아느냐 ' 를 보여주는 지표
네트워크 유형에 따른 중심성

     B
           C                       E
G                                      F
                                                F   D   B      A      C       E   G
               (b)Circle
               (b)Circle
                           D
     A
           D                               G
 F                         C
      E
                               A       B

 (a)Star                                                    (c)Line



                           Star                Circle                 Line
     연결성                       A               동일                  F, G 제외
     매개성                       A               동일                         A
     근접성                       A               동일                         A
구글의 권위 지수
  Page Rank   Flow Betweenness   high




                                        Level of Importance
                                        Level of Importance
                                 low
네트워크 유형과 확산 조정 메커니즘



               < 네트워크 A>




               < 네트워크 B>
클러스터 ,
구조적 등위성 , 블록 모델링
실습 : 각 번호에 해당하는 본인과 동료의 이름을 적으세요

                                                                              7
                  2                                            6
    1                                                                                        8
                      3
                                                          11
        5
                  4                                                 10              9
                                     22
                                                23


                                          21
             25


        24                      12        13
                                                                    19                   20
                      18
                                                     14


                           17                                                           26
                                               15
                                     16




                                                          Group, group member, liaison, isolates, dyad, tree
                                                                                           Richards (1995)
Group, group member, liaison, isolates, dyad, tree

                                                                                  7
                      2                                            6
        1                                                                                        8
                          3
                                                              11
            5
                      4                                                 10              9
                                         22
                                                    23


                                              21
                 25


            24                      12        13
                                                                        19                   20
                          18
                                                         14


                               17                                                           26
                                                   15
                                         16




                                                              Group, group member, liaison, isolates, dyad, tree
                                                                                               Richards (1995)
7
              2                                            6
1                                                                                8
                  3
                                                      11
    5
              4                                                10       9
                                 22
                                            23


                                      21
         25


    24                      12        13
                                                               19            20
                  18
                                                 14


                       17                                                   26
                                           15
                                 16




                                                 Clustering Coefficient
연결성에서 당신은 얼마나 중요한 존재인가 ?
연결성에서 당신은 얼마나 중요한 존재인가 ?
매개성에서 당신은 얼마나 중요한 존재인가 ?
근접성에서 당신은 얼마나 중요한 존재인가 ?
Group, group member, liaison, isolates, dyad, tree

                                                                                  7
                      2                                            6
        1                                                                                        8
                          3
                                                              11
            5
                      4                                                 10              9
                                         22
                                                    23


                                              21
                 25


            24                      12        13
                                                                        19                   20
                          18
                                                         14


                               17                                                           26
                                                   15
                                         16




  1
                                                              Group, group member, liaison, isolates, dyad, tree
                                                                                               Richards (1995)
네트워크에서 당신은 얼마나 중요한 존재인가 ?

                                                                         7
                  2                                       6
    1                                                                                   8
                      3
                                                     11
        5
                  4                                            10              9
                                     22
                                                23


                                          21
             25


        24                      12        13
                                                               19                   20
                      18



                           17                                                      26
                                               15
                                     16


                                                              제거된 노드 수                       1

                                                              파편화 정도                        0.409

                                                     Group, group member, liaison, isolates, dyad, tree
                                                                                      Richards (1995)
Group, group member, liaison, isolates, dyad, tree

                                                                                  7
                      2                                            6
        1                                                                                        8
                          3
                                                              11
            5
                      4                                                 10              9
                                         22
                                                    23


                                              21
                 25


            24                      12        13
                                                                        19                   20
                          18
                                                         14


                               17                                                           26
                                                   15
                                         16




  2
                                                              Group, group member, liaison, isolates, dyad, tree
                                                                                               Richards (1995)
네트워크에서 당신은 얼마나 중요한 존재인가 ?

                                                                         7
                  2                                       6
    1                                                                                   8
                      3
                                                     11
        5
                  4                                            10              9
                                                23


                                          21
             25


        24                      12        13
                                                               19                   20
                      18



                           17                                                      26
                                               15
                                     16


                                                              제거된 노드 수                       2

                                                              파편화 정도                        0.468

                                                     Group, group member, liaison, isolates, dyad, tree
                                                                                      Richards (1995)
Group, group member, liaison, isolates, dyad, tree

                                                                                  7
                      2                                            6
        1                                                                                        8
                          3
                                                              11
            5
                      4                                                 10              9
                                         22
                                                    23


                                              21
                 25


            24                      12        13
                                                                        19                   20
                          18
                                                         14


                               17                                                           26
                                                   15
                                         16




  3
                                                              Group, group member, liaison, isolates, dyad, tree
                                                                                               Richards (1995)
네트워크에서 당신은 얼마나 중요한 존재인가 ?

                                                                         7
                  2                                       6
    1                                                                                   8
                      3
                                                     11
        5
                  4                                            10              9
                                                23



             25


        24                      12        13
                                                               19                   20
                      18



                           17                                                      26
                                               15
                                     16


                                                              제거된 노드 수                       3

                                                              파편화 정도                        0.778

                                                     Group, group member, liaison, isolates, dyad, tree
                                                                                      Richards (1995)
Group, group member, liaison, isolates, dyad, tree

                                                                                  7
                      2                                            6
        1                                                                                        8
                          3
                                                              11
            5
                      4                                                 10              9
                                         22
                                                    23


                                              21
                 25


            24                      12        13
                                                                        19                   20
                          18
                                                         14


                               17                                                           26
                                                   15
                                         16




  4
                                                              Group, group member, liaison, isolates, dyad, tree
                                                                                               Richards (1995)
네트워크에서 당신은 얼마나 중요한 존재인가 ?

                                                                         7
                  2
    1                                                                                   8
                      3
                                                     11
        5
                  4                                            10              9
                                                23



             25


        24                      12        13
                                                               19                   20
                      18



                           17                                                      26
                                               15
                                     16


                                                            제거된 노드 수                         4

                                                              파편화 정도                        0.886

                                                     Group, group member, liaison, isolates, dyad, tree
                                                                                      Richards (1995)
Group, group member, liaison, isolates, dyad, tree

                                                                                  7
                      2                                            6
        1                                                                                        8
                          3
                                                              11
            5
                      4                                                 10              9
                                         22
                                                    23


                                              21
                 25


            24                      12        13
                                                                        19                   20
                          18
                                                         14


                               17                                                           26
                                                   15
                                         16




  5
                                                              Group, group member, liaison, isolates, dyad, tree
                                                                                               Richards (1995)
네트워크에서 당신은 얼마나 중요한 존재인가 ?

                                                                         7
                  2
    1                                                                                   8
                      3
                                                     11
        5
                                                               10              9
                                                23



             25


        24                      12        13
                                                               19                   20
                      18



                           17                                                      26
                                               15
                                     16


                                                            제거된 노드 수                         5

                                                              파편화 정도                        0.902

                                                     Group, group member, liaison, isolates, dyad, tree
                                                                                      Richards (1995)
네트워크에서 당신은 얼마나 중요한 존재인가 ?

                                                                                          7
                      2                                                        6
        1                                                                                                8
                              3
                                                                          11
            5
                                                                                   10           9
                      4
                                              22
                                                                23


                                                         21
                 25


            24                           12             13
                                                                                   19                20
                             18
                                                                     14


                                    17                                                              26
                                                              15
                                              16




      파편화                 파편화                     파편화                         파편화                 파편화
  (1 개 노드 제거 )        (2 개 노드 제거 )            (3 개 노드 제거 )                (4 개 노드 제거 )        (5 개 노드 제거 )
     0.409                 0.468                      0.778                    0.886               0.902
      (14)                (14/22)                  (14/22/21)              (14/22/21/6)       (14/22/21/6/4)
NodeXL
http://novaspivack.typepad.com/nova_spivacks_weblog/2007/02/steps_towards_a.html 에서 재인용
Big data
   Big data usually includes data sets with sizes beyond the
    ability of commonly-used software tools to capture,
    manage, and process the data within a tolerable elapsed
    time.
   Big data sizes may vary per discipline.
   Characteristics: Garner’s 3Vs plus SAS’s VC
-   Volume (amount of data), velocity (speed of data in and
    out), variety (range of data types and sources)
-   Variability: Data flows can be highly inconsistent with
    daily, seasonal, and event-triggered peak data loads
-   Complexity: Multiple data sources requiring cleaning,
    linking, and matching the data across systems.
All models are wrong but some are useful
      - Emergence of data author on dataverse
Big data and the end of theory?
   Does big data have the answers? Maybe some, but not all, says -
    Mark Graham
   In 2008, Chris Anderson, then editor of Wired, wrote a provocative
    piece titled The End of Theory. Anderson was referring to the ways
    that computers, algorithms, and big data can potentially generate
    more insightful, useful, accurate, or true results than specialists or
    domain experts who traditionally craft carefully targeted hypotheses
    and research strategies.
   We may one day get to the point where sufficient quantities of big
    data can be harvested to answer all of the social questions that most
    concern us. I doubt it though. There will always be digital divides;
    always be uneven data shadows; and always be biases in how
    information and technology are used and produced.
   And so we shouldn't forget the important role of specialists to
    contextualise and offer insights into what our data do, and maybe
    more importantly, don't tell us.

                                    http://www.guardian.co.uk/news/datablog/2012/mar/09/big-data-theory
Health Networks Research Today
CONNECTED: THE SURPRISING P OWER OF
OUR SOCIAL NETWORKS AND HOW THEY
SHAPE OUR LIVES

By Nicholas A. Christakis and James H. Fowler
Illustrated. 338 pp. Little, Brown & Company

     Nicholas Christakis: How social networks predict
     epidemics


    James Fowler - Back to the Village
CSS Approach
1. development of webometric tools to automate
    social Internet research process (e.g., data
    collection and analysis from search engines,
    SNS and microblogging sites)
2. experimentation with new types of data
    visualization (e.g, HNA and dynamic
    geographical mappings using Google)
Why CSS?
Bonacich, P. (2004).
The Invasion of the Physicists. Social Networks 26(3): 285-288


                          • Savage and Burrows (2007, p.
                            886) laments, “Fifty years ago,
                            academic social scientists might
                            be seen as occupying the apex of
                            the – generally limited – social
                            science research ‘apparatus’. Now
                            they occupy an increasingly
                            marginal position in the huge
                            research infrastructure.
http://www.nature.com/news/compu
-social-science-making-the-links-1.1
http://www.nature.com/news/computational-social-science-making-the-links-
1.11243
http://www.nature.com/news/facebook-experiment-boosts-us-voter-turnout-1.114
http://overstated.net/2010/11/04/how-voters-turned-out-on-facebook
“Webometrics refers to a set of research methods that
illustrates texts and their web linkages as a network and
quantitatively examine the spreadable aspects of web-
mediated communication activities of social actors and issues
(Jenkins, 2011), in comparison to traditional methods (Savage
& Burrows, 2007; Salganik & Levy, 2012). ” (by Han Woo Park)
Seminal publications: * 실시간 피인용률 보기
   Garton, L., Haythornthwaite, C., & Wellman, B. (1997).
    Studying online social networks. Journal of Computer-
    Mediated Communication, 3(1).
   Wellman, B. (2001). 'Computer networks as social
    networks,' Science,Vol. 293, Issue (14), pp. 2031-2034.
   Park, H. W. (2003). Hyperlink network analysis: A new
    method for the study of social structure on the web.
    Connections, 25(1), 49-61 .
   Park, H. W., & Thelwall, M. (2003). Hyperlink analyses of
    the World Wide Web: A review. Journal of Computer-
    Mediated Communication, 8(4).
Recent special issues related to CSS
   Special issues

- Social Science Computer Review, 2011, 29(3)
Theme: Social Networking Activities Across Countries

- Asian Journal of Communication, 2011, 21(5),
Theme: Online Social Capital and Participation in Asia-Pacific

- Scientometrics, 2012, 90(2)
Theme : Triple Helix and Innovation in Asia using Scientometrics,
  Webometrics, and Informetrics

- Journal of Computer-Mediated Communication, 2012, 17(2)
Theme: Hyperlinked Society
Selected publications related to CSS
   Recent publications

-   Park, H. W., Barnett, G. A., & Chung, C. J. (2011). Structural changes in the global hyperlink
    network: Centralization or diversification. Global networks. 11 (4). 522–542
-   Lim, Y. S., & Park, H. W. (2011). How Do Congressional Members Appear on the Web?:
    Tracking the Web Visibility of South Korean Politicians. Government Information Quarterly.
    28 (4), 514-521.
-   Sandra González-Bailón, Rafael E. Banchs and Andreas Kaltenbrunner (2012). Emotions,
    Public Opinion, and U.S. Presidential Approval Rates: A 5-Year Analysis of Online Political
    Discussions Human Communication Research
-   Sams, S., Park, H. W. (2012 forthcoming). The Presence of Hyperlinks and Messages on Social
    Networking Sites: A Case Study of Cyworld in Korea. Journal of Computer-Mediated
    Communication
-   Nam, Y., Lee, Y.-O., Park, H.W. (2013, March). Can web ecology provide a clearer
    understanding of people’s information behavior during election campaigns?. Social Science
    Information.
Mike Thelwall: WA 2.0


http://lexiurl.wlv.ac.uk/index.html
Prof. Han Woo PARK
                                      CyberEmotions Research Center
                                      Department of Media and Communincation,
                                      YeungNam University, Korea
                                      hanpark@ynu.ac.kr
                                      http://www.hanpark.net

                                      Formerly,
                                      World Class University Webometrics Institute


WCU
WEBOMETRICS
INSTITUTE
INVESTIGATING INTERNET-BASED POLITIC WITH E-RESEARCH TOOLS

Mais conteúdo relacionado

Semelhante a Social Web Network Analysis-Health Communication Networks

2010 june - personal democracy forum - marc smith - mapping political socia...
2010   june - personal democracy forum - marc smith - mapping political socia...2010   june - personal democracy forum - marc smith - mapping political socia...
2010 june - personal democracy forum - marc smith - mapping political socia...Marc Smith
 
論文サーベイ(Sasaki)
論文サーベイ(Sasaki)論文サーベイ(Sasaki)
論文サーベイ(Sasaki)Hajime Sasaki
 
Vinci2011会议演讲PPT
Vinci2011会议演讲PPTVinci2011会议演讲PPT
Vinci2011会议演讲PPTdasiyjun
 
3centrality-1235089982174yuuhhh803-1.ppt
3centrality-1235089982174yuuhhh803-1.ppt3centrality-1235089982174yuuhhh803-1.ppt
3centrality-1235089982174yuuhhh803-1.pptTariqqandeel
 
The Social Life of Second Life: An analysis of the networks of a virtual world
The Social Life of Second Life: An analysis of the networks of a virtual worldThe Social Life of Second Life: An analysis of the networks of a virtual world
The Social Life of Second Life: An analysis of the networks of a virtual worldAleks Krotoski
 
Social Network Visualization 101
Social Network Visualization 101Social Network Visualization 101
Social Network Visualization 101librarianrafia
 
Tutorial on Relationship Mining In Online Social Networks
Tutorial on Relationship Mining In Online Social NetworksTutorial on Relationship Mining In Online Social Networks
Tutorial on Relationship Mining In Online Social Networkspjing2
 
How Can Software Engineering Support AI
How Can Software Engineering Support AIHow Can Software Engineering Support AI
How Can Software Engineering Support AIWalid Maalej
 
Comparison of Online Social Relations in terms of Volume vs. Interaction: A C...
Comparison of Online Social Relations in terms of Volume vs. Interaction: A C...Comparison of Online Social Relations in terms of Volume vs. Interaction: A C...
Comparison of Online Social Relations in terms of Volume vs. Interaction: A C...Haewoon Kwak
 
Social Network Analysis: What It Is, Why We Should Care, and What We Can Lear...
Social Network Analysis: What It Is, Why We Should Care, and What We Can Lear...Social Network Analysis: What It Is, Why We Should Care, and What We Can Lear...
Social Network Analysis: What It Is, Why We Should Care, and What We Can Lear...Xiaohan Zeng
 
LSS'11: Charting Collections Of Connections In Social Media
LSS'11: Charting Collections Of Connections In Social MediaLSS'11: Charting Collections Of Connections In Social Media
LSS'11: Charting Collections Of Connections In Social MediaLocal Social Summit
 
02 Network Data Collection
02 Network Data Collection02 Network Data Collection
02 Network Data Collectiondnac
 
20120301 strata-marc smith-mapping social media networks with no coding using...
20120301 strata-marc smith-mapping social media networks with no coding using...20120301 strata-marc smith-mapping social media networks with no coding using...
20120301 strata-marc smith-mapping social media networks with no coding using...Marc Smith
 
20111103 con tech2011-marc smith
20111103 con tech2011-marc smith20111103 con tech2011-marc smith
20111103 con tech2011-marc smithMarc Smith
 

Semelhante a Social Web Network Analysis-Health Communication Networks (20)

SSRI_pt1.ppt
SSRI_pt1.pptSSRI_pt1.ppt
SSRI_pt1.ppt
 
2010 june - personal democracy forum - marc smith - mapping political socia...
2010   june - personal democracy forum - marc smith - mapping political socia...2010   june - personal democracy forum - marc smith - mapping political socia...
2010 june - personal democracy forum - marc smith - mapping political socia...
 
論文サーベイ(Sasaki)
論文サーベイ(Sasaki)論文サーベイ(Sasaki)
論文サーベイ(Sasaki)
 
07 Whole Network Descriptive Statistics
07 Whole Network Descriptive Statistics07 Whole Network Descriptive Statistics
07 Whole Network Descriptive Statistics
 
05 Whole Network Descriptive Stats
05 Whole Network Descriptive Stats05 Whole Network Descriptive Stats
05 Whole Network Descriptive Stats
 
Vinci2011会议演讲PPT
Vinci2011会议演讲PPTVinci2011会议演讲PPT
Vinci2011会议演讲PPT
 
3centrality-1235089982174yuuhhh803-1.ppt
3centrality-1235089982174yuuhhh803-1.ppt3centrality-1235089982174yuuhhh803-1.ppt
3centrality-1235089982174yuuhhh803-1.ppt
 
The Social Life of Second Life: An analysis of the networks of a virtual world
The Social Life of Second Life: An analysis of the networks of a virtual worldThe Social Life of Second Life: An analysis of the networks of a virtual world
The Social Life of Second Life: An analysis of the networks of a virtual world
 
Social Network Visualization 101
Social Network Visualization 101Social Network Visualization 101
Social Network Visualization 101
 
Tutorial on Relationship Mining In Online Social Networks
Tutorial on Relationship Mining In Online Social NetworksTutorial on Relationship Mining In Online Social Networks
Tutorial on Relationship Mining In Online Social Networks
 
How Can Software Engineering Support AI
How Can Software Engineering Support AIHow Can Software Engineering Support AI
How Can Software Engineering Support AI
 
18 Diffusion Models and Peer Influence
18 Diffusion Models and Peer Influence18 Diffusion Models and Peer Influence
18 Diffusion Models and Peer Influence
 
09 Diffusion Models & Peer Influence
09 Diffusion Models & Peer Influence09 Diffusion Models & Peer Influence
09 Diffusion Models & Peer Influence
 
Comparison of Online Social Relations in terms of Volume vs. Interaction: A C...
Comparison of Online Social Relations in terms of Volume vs. Interaction: A C...Comparison of Online Social Relations in terms of Volume vs. Interaction: A C...
Comparison of Online Social Relations in terms of Volume vs. Interaction: A C...
 
Social Network Analysis: What It Is, Why We Should Care, and What We Can Lear...
Social Network Analysis: What It Is, Why We Should Care, and What We Can Lear...Social Network Analysis: What It Is, Why We Should Care, and What We Can Lear...
Social Network Analysis: What It Is, Why We Should Care, and What We Can Lear...
 
LSS'11: Charting Collections Of Connections In Social Media
LSS'11: Charting Collections Of Connections In Social MediaLSS'11: Charting Collections Of Connections In Social Media
LSS'11: Charting Collections Of Connections In Social Media
 
02 Network Data Collection
02 Network Data Collection02 Network Data Collection
02 Network Data Collection
 
02 Network Data Collection (2016)
02 Network Data Collection (2016)02 Network Data Collection (2016)
02 Network Data Collection (2016)
 
20120301 strata-marc smith-mapping social media networks with no coding using...
20120301 strata-marc smith-mapping social media networks with no coding using...20120301 strata-marc smith-mapping social media networks with no coding using...
20120301 strata-marc smith-mapping social media networks with no coding using...
 
20111103 con tech2011-marc smith
20111103 con tech2011-marc smith20111103 con tech2011-marc smith
20111103 con tech2011-marc smith
 

Mais de Han Woo PARK

소셜 빅데이터를 활용한_페이스북_이용자들의_반응과_관계_분석
소셜 빅데이터를 활용한_페이스북_이용자들의_반응과_관계_분석소셜 빅데이터를 활용한_페이스북_이용자들의_반응과_관계_분석
소셜 빅데이터를 활용한_페이스북_이용자들의_반응과_관계_분석Han Woo PARK
 
페이스북 선도자 탄핵촛불에서 캠폐인 이동경로
페이스북 선도자 탄핵촛불에서 캠폐인 이동경로페이스북 선도자 탄핵촛불에서 캠폐인 이동경로
페이스북 선도자 탄핵촛불에서 캠폐인 이동경로Han Woo PARK
 
WATEF 2018 신년 세미나(수정)
WATEF 2018 신년 세미나(수정)WATEF 2018 신년 세미나(수정)
WATEF 2018 신년 세미나(수정)Han Woo PARK
 
세계트리플헬릭스미래전략학회 WATEF 2018 신년 세미나
세계트리플헬릭스미래전략학회 WATEF 2018 신년 세미나세계트리플헬릭스미래전략학회 WATEF 2018 신년 세미나
세계트리플헬릭스미래전략학회 WATEF 2018 신년 세미나Han Woo PARK
 
Disc 2015 보도자료 (휴대폰번호 삭제-수정)
Disc 2015 보도자료 (휴대폰번호 삭제-수정)Disc 2015 보도자료 (휴대폰번호 삭제-수정)
Disc 2015 보도자료 (휴대폰번호 삭제-수정)Han Woo PARK
 
Another Interdisciplinary Transformation: Beyond an Area-studies Journal
Another Interdisciplinary Transformation: Beyond an Area-studies JournalAnother Interdisciplinary Transformation: Beyond an Area-studies Journal
Another Interdisciplinary Transformation: Beyond an Area-studies JournalHan Woo PARK
 
4차산업혁명 린든달러 비트코인 알트코인 암호화폐 가상화폐 등
4차산업혁명 린든달러 비트코인 알트코인 암호화폐 가상화폐 등4차산업혁명 린든달러 비트코인 알트코인 암호화폐 가상화폐 등
4차산업혁명 린든달러 비트코인 알트코인 암호화폐 가상화폐 등Han Woo PARK
 
KISTI-WATEF-BK21Plus-사이버감성연구소 2017 동계세미나 자료집
KISTI-WATEF-BK21Plus-사이버감성연구소 2017 동계세미나 자료집KISTI-WATEF-BK21Plus-사이버감성연구소 2017 동계세미나 자료집
KISTI-WATEF-BK21Plus-사이버감성연구소 2017 동계세미나 자료집Han Woo PARK
 
박한우 교수 프로파일 (31 oct2017)
박한우 교수 프로파일 (31 oct2017)박한우 교수 프로파일 (31 oct2017)
박한우 교수 프로파일 (31 oct2017)Han Woo PARK
 
Global mapping of artificial intelligence in Google and Google Scholar
Global mapping of artificial intelligence in Google and Google ScholarGlobal mapping of artificial intelligence in Google and Google Scholar
Global mapping of artificial intelligence in Google and Google ScholarHan Woo PARK
 
박한우 영어 이력서 Curriculum vitae 경희대 행사 제출용
박한우 영어 이력서 Curriculum vitae 경희대 행사 제출용박한우 영어 이력서 Curriculum vitae 경희대 행사 제출용
박한우 영어 이력서 Curriculum vitae 경희대 행사 제출용Han Woo PARK
 
향기담은 하루찻집
향기담은 하루찻집향기담은 하루찻집
향기담은 하루찻집Han Woo PARK
 
Twitter network map of #ACPC2017 1st day using NodeXL
Twitter network map of #ACPC2017 1st day using NodeXLTwitter network map of #ACPC2017 1st day using NodeXL
Twitter network map of #ACPC2017 1st day using NodeXLHan Woo PARK
 
페이스북 댓글을 통해 살펴본 대구·경북(TK) 촛불집회
페이스북 댓글을 통해 살펴본 대구·경북(TK) 촛불집회페이스북 댓글을 통해 살펴본 대구·경북(TK) 촛불집회
페이스북 댓글을 통해 살펴본 대구·경북(TK) 촛불집회Han Woo PARK
 
Facebook bigdata to understand regime change and migration patterns during ca...
Facebook bigdata to understand regime change and migration patterns during ca...Facebook bigdata to understand regime change and migration patterns during ca...
Facebook bigdata to understand regime change and migration patterns during ca...Han Woo PARK
 
세계산학관협력총회 Watef 패널을 공지합니다
세계산학관협력총회 Watef 패널을 공지합니다세계산학관협력총회 Watef 패널을 공지합니다
세계산학관협력총회 Watef 패널을 공지합니다Han Woo PARK
 
2017 대통령선거 후보수락 유튜브 후보수락 동영상 김찬우 박효찬 박한우
2017 대통령선거 후보수락 유튜브 후보수락 동영상 김찬우 박효찬 박한우2017 대통령선거 후보수락 유튜브 후보수락 동영상 김찬우 박효찬 박한우
2017 대통령선거 후보수락 유튜브 후보수락 동영상 김찬우 박효찬 박한우Han Woo PARK
 
2017년 인포그래픽스 과제모음
2017년 인포그래픽스 과제모음2017년 인포그래픽스 과제모음
2017년 인포그래픽스 과제모음Han Woo PARK
 
SNS 매개 학습공동체의 학습네트워크 탐색 : 페이스북 그룹을 중심으로
SNS 매개 학습공동체의 학습네트워크 탐색 : 페이스북 그룹을 중심으로SNS 매개 학습공동체의 학습네트워크 탐색 : 페이스북 그룹을 중심으로
SNS 매개 학습공동체의 학습네트워크 탐색 : 페이스북 그룹을 중심으로Han Woo PARK
 
2016년 촛불집회의 페이스북 댓글 데이터를 통해 본 하이브리드 미디어 현상
2016년 촛불집회의 페이스북 댓글 데이터를 통해 본 하이브리드 미디어 현상2016년 촛불집회의 페이스북 댓글 데이터를 통해 본 하이브리드 미디어 현상
2016년 촛불집회의 페이스북 댓글 데이터를 통해 본 하이브리드 미디어 현상Han Woo PARK
 

Mais de Han Woo PARK (20)

소셜 빅데이터를 활용한_페이스북_이용자들의_반응과_관계_분석
소셜 빅데이터를 활용한_페이스북_이용자들의_반응과_관계_분석소셜 빅데이터를 활용한_페이스북_이용자들의_반응과_관계_분석
소셜 빅데이터를 활용한_페이스북_이용자들의_반응과_관계_분석
 
페이스북 선도자 탄핵촛불에서 캠폐인 이동경로
페이스북 선도자 탄핵촛불에서 캠폐인 이동경로페이스북 선도자 탄핵촛불에서 캠폐인 이동경로
페이스북 선도자 탄핵촛불에서 캠폐인 이동경로
 
WATEF 2018 신년 세미나(수정)
WATEF 2018 신년 세미나(수정)WATEF 2018 신년 세미나(수정)
WATEF 2018 신년 세미나(수정)
 
세계트리플헬릭스미래전략학회 WATEF 2018 신년 세미나
세계트리플헬릭스미래전략학회 WATEF 2018 신년 세미나세계트리플헬릭스미래전략학회 WATEF 2018 신년 세미나
세계트리플헬릭스미래전략학회 WATEF 2018 신년 세미나
 
Disc 2015 보도자료 (휴대폰번호 삭제-수정)
Disc 2015 보도자료 (휴대폰번호 삭제-수정)Disc 2015 보도자료 (휴대폰번호 삭제-수정)
Disc 2015 보도자료 (휴대폰번호 삭제-수정)
 
Another Interdisciplinary Transformation: Beyond an Area-studies Journal
Another Interdisciplinary Transformation: Beyond an Area-studies JournalAnother Interdisciplinary Transformation: Beyond an Area-studies Journal
Another Interdisciplinary Transformation: Beyond an Area-studies Journal
 
4차산업혁명 린든달러 비트코인 알트코인 암호화폐 가상화폐 등
4차산업혁명 린든달러 비트코인 알트코인 암호화폐 가상화폐 등4차산업혁명 린든달러 비트코인 알트코인 암호화폐 가상화폐 등
4차산업혁명 린든달러 비트코인 알트코인 암호화폐 가상화폐 등
 
KISTI-WATEF-BK21Plus-사이버감성연구소 2017 동계세미나 자료집
KISTI-WATEF-BK21Plus-사이버감성연구소 2017 동계세미나 자료집KISTI-WATEF-BK21Plus-사이버감성연구소 2017 동계세미나 자료집
KISTI-WATEF-BK21Plus-사이버감성연구소 2017 동계세미나 자료집
 
박한우 교수 프로파일 (31 oct2017)
박한우 교수 프로파일 (31 oct2017)박한우 교수 프로파일 (31 oct2017)
박한우 교수 프로파일 (31 oct2017)
 
Global mapping of artificial intelligence in Google and Google Scholar
Global mapping of artificial intelligence in Google and Google ScholarGlobal mapping of artificial intelligence in Google and Google Scholar
Global mapping of artificial intelligence in Google and Google Scholar
 
박한우 영어 이력서 Curriculum vitae 경희대 행사 제출용
박한우 영어 이력서 Curriculum vitae 경희대 행사 제출용박한우 영어 이력서 Curriculum vitae 경희대 행사 제출용
박한우 영어 이력서 Curriculum vitae 경희대 행사 제출용
 
향기담은 하루찻집
향기담은 하루찻집향기담은 하루찻집
향기담은 하루찻집
 
Twitter network map of #ACPC2017 1st day using NodeXL
Twitter network map of #ACPC2017 1st day using NodeXLTwitter network map of #ACPC2017 1st day using NodeXL
Twitter network map of #ACPC2017 1st day using NodeXL
 
페이스북 댓글을 통해 살펴본 대구·경북(TK) 촛불집회
페이스북 댓글을 통해 살펴본 대구·경북(TK) 촛불집회페이스북 댓글을 통해 살펴본 대구·경북(TK) 촛불집회
페이스북 댓글을 통해 살펴본 대구·경북(TK) 촛불집회
 
Facebook bigdata to understand regime change and migration patterns during ca...
Facebook bigdata to understand regime change and migration patterns during ca...Facebook bigdata to understand regime change and migration patterns during ca...
Facebook bigdata to understand regime change and migration patterns during ca...
 
세계산학관협력총회 Watef 패널을 공지합니다
세계산학관협력총회 Watef 패널을 공지합니다세계산학관협력총회 Watef 패널을 공지합니다
세계산학관협력총회 Watef 패널을 공지합니다
 
2017 대통령선거 후보수락 유튜브 후보수락 동영상 김찬우 박효찬 박한우
2017 대통령선거 후보수락 유튜브 후보수락 동영상 김찬우 박효찬 박한우2017 대통령선거 후보수락 유튜브 후보수락 동영상 김찬우 박효찬 박한우
2017 대통령선거 후보수락 유튜브 후보수락 동영상 김찬우 박효찬 박한우
 
2017년 인포그래픽스 과제모음
2017년 인포그래픽스 과제모음2017년 인포그래픽스 과제모음
2017년 인포그래픽스 과제모음
 
SNS 매개 학습공동체의 학습네트워크 탐색 : 페이스북 그룹을 중심으로
SNS 매개 학습공동체의 학습네트워크 탐색 : 페이스북 그룹을 중심으로SNS 매개 학습공동체의 학습네트워크 탐색 : 페이스북 그룹을 중심으로
SNS 매개 학습공동체의 학습네트워크 탐색 : 페이스북 그룹을 중심으로
 
2016년 촛불집회의 페이스북 댓글 데이터를 통해 본 하이브리드 미디어 현상
2016년 촛불집회의 페이스북 댓글 데이터를 통해 본 하이브리드 미디어 현상2016년 촛불집회의 페이스북 댓글 데이터를 통해 본 하이브리드 미디어 현상
2016년 촛불집회의 페이스북 댓글 데이터를 통해 본 하이브리드 미디어 현상
 

Último

Call Girls Ooty Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Ooty Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Ooty Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Ooty Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 
Top Rated Bangalore Call Girls Richmond Circle ⟟ 8250192130 ⟟ Call Me For Gen...
Top Rated Bangalore Call Girls Richmond Circle ⟟ 8250192130 ⟟ Call Me For Gen...Top Rated Bangalore Call Girls Richmond Circle ⟟ 8250192130 ⟟ Call Me For Gen...
Top Rated Bangalore Call Girls Richmond Circle ⟟ 8250192130 ⟟ Call Me For Gen...narwatsonia7
 
Call Girls Faridabad Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Faridabad Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Faridabad Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Faridabad Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 
Manyata Tech Park ( Call Girls ) Bangalore ✔ 6297143586 ✔ Hot Model With Sexy...
Manyata Tech Park ( Call Girls ) Bangalore ✔ 6297143586 ✔ Hot Model With Sexy...Manyata Tech Park ( Call Girls ) Bangalore ✔ 6297143586 ✔ Hot Model With Sexy...
Manyata Tech Park ( Call Girls ) Bangalore ✔ 6297143586 ✔ Hot Model With Sexy...vidya singh
 
College Call Girls in Haridwar 9667172968 Short 4000 Night 10000 Best call gi...
College Call Girls in Haridwar 9667172968 Short 4000 Night 10000 Best call gi...College Call Girls in Haridwar 9667172968 Short 4000 Night 10000 Best call gi...
College Call Girls in Haridwar 9667172968 Short 4000 Night 10000 Best call gi...perfect solution
 
VIP Call Girls Indore Kirti 💚😋 9256729539 🚀 Indore Escorts
VIP Call Girls Indore Kirti 💚😋  9256729539 🚀 Indore EscortsVIP Call Girls Indore Kirti 💚😋  9256729539 🚀 Indore Escorts
VIP Call Girls Indore Kirti 💚😋 9256729539 🚀 Indore Escortsaditipandeya
 
Call Girls Visakhapatnam Just Call 9907093804 Top Class Call Girl Service Ava...
Call Girls Visakhapatnam Just Call 9907093804 Top Class Call Girl Service Ava...Call Girls Visakhapatnam Just Call 9907093804 Top Class Call Girl Service Ava...
Call Girls Visakhapatnam Just Call 9907093804 Top Class Call Girl Service Ava...Dipal Arora
 
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service AvailableCall Girls Gwalior Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service AvailableDipal Arora
 
Top Rated Bangalore Call Girls Ramamurthy Nagar ⟟ 8250192130 ⟟ Call Me For Ge...
Top Rated Bangalore Call Girls Ramamurthy Nagar ⟟ 8250192130 ⟟ Call Me For Ge...Top Rated Bangalore Call Girls Ramamurthy Nagar ⟟ 8250192130 ⟟ Call Me For Ge...
Top Rated Bangalore Call Girls Ramamurthy Nagar ⟟ 8250192130 ⟟ Call Me For Ge...narwatsonia7
 
Call Girls Nagpur Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Nagpur Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Nagpur Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Nagpur Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 
(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...
(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...
(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...parulsinha
 
Call Girls Coimbatore Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Coimbatore Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Coimbatore Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Coimbatore Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 
Call Girls Kochi Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Kochi Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Kochi Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Kochi Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 
Premium Call Girls Cottonpet Whatsapp 7001035870 Independent Escort Service
Premium Call Girls Cottonpet Whatsapp 7001035870 Independent Escort ServicePremium Call Girls Cottonpet Whatsapp 7001035870 Independent Escort Service
Premium Call Girls Cottonpet Whatsapp 7001035870 Independent Escort Servicevidya singh
 
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any TimeTop Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any TimeCall Girls Delhi
 
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...astropune
 
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...Taniya Sharma
 
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...aartirawatdelhi
 
Premium Bangalore Call Girls Jigani Dail 6378878445 Escort Service For Hot Ma...
Premium Bangalore Call Girls Jigani Dail 6378878445 Escort Service For Hot Ma...Premium Bangalore Call Girls Jigani Dail 6378878445 Escort Service For Hot Ma...
Premium Bangalore Call Girls Jigani Dail 6378878445 Escort Service For Hot Ma...tanya dube
 
Call Girls Gwalior Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Gwalior Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 9907093804 Top Class Call Girl Service AvailableDipal Arora
 

Último (20)

Call Girls Ooty Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Ooty Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Ooty Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Ooty Just Call 9907093804 Top Class Call Girl Service Available
 
Top Rated Bangalore Call Girls Richmond Circle ⟟ 8250192130 ⟟ Call Me For Gen...
Top Rated Bangalore Call Girls Richmond Circle ⟟ 8250192130 ⟟ Call Me For Gen...Top Rated Bangalore Call Girls Richmond Circle ⟟ 8250192130 ⟟ Call Me For Gen...
Top Rated Bangalore Call Girls Richmond Circle ⟟ 8250192130 ⟟ Call Me For Gen...
 
Call Girls Faridabad Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Faridabad Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Faridabad Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Faridabad Just Call 9907093804 Top Class Call Girl Service Available
 
Manyata Tech Park ( Call Girls ) Bangalore ✔ 6297143586 ✔ Hot Model With Sexy...
Manyata Tech Park ( Call Girls ) Bangalore ✔ 6297143586 ✔ Hot Model With Sexy...Manyata Tech Park ( Call Girls ) Bangalore ✔ 6297143586 ✔ Hot Model With Sexy...
Manyata Tech Park ( Call Girls ) Bangalore ✔ 6297143586 ✔ Hot Model With Sexy...
 
College Call Girls in Haridwar 9667172968 Short 4000 Night 10000 Best call gi...
College Call Girls in Haridwar 9667172968 Short 4000 Night 10000 Best call gi...College Call Girls in Haridwar 9667172968 Short 4000 Night 10000 Best call gi...
College Call Girls in Haridwar 9667172968 Short 4000 Night 10000 Best call gi...
 
VIP Call Girls Indore Kirti 💚😋 9256729539 🚀 Indore Escorts
VIP Call Girls Indore Kirti 💚😋  9256729539 🚀 Indore EscortsVIP Call Girls Indore Kirti 💚😋  9256729539 🚀 Indore Escorts
VIP Call Girls Indore Kirti 💚😋 9256729539 🚀 Indore Escorts
 
Call Girls Visakhapatnam Just Call 9907093804 Top Class Call Girl Service Ava...
Call Girls Visakhapatnam Just Call 9907093804 Top Class Call Girl Service Ava...Call Girls Visakhapatnam Just Call 9907093804 Top Class Call Girl Service Ava...
Call Girls Visakhapatnam Just Call 9907093804 Top Class Call Girl Service Ava...
 
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service AvailableCall Girls Gwalior Just Call 8617370543 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 8617370543 Top Class Call Girl Service Available
 
Top Rated Bangalore Call Girls Ramamurthy Nagar ⟟ 8250192130 ⟟ Call Me For Ge...
Top Rated Bangalore Call Girls Ramamurthy Nagar ⟟ 8250192130 ⟟ Call Me For Ge...Top Rated Bangalore Call Girls Ramamurthy Nagar ⟟ 8250192130 ⟟ Call Me For Ge...
Top Rated Bangalore Call Girls Ramamurthy Nagar ⟟ 8250192130 ⟟ Call Me For Ge...
 
Call Girls Nagpur Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Nagpur Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Nagpur Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Nagpur Just Call 9907093804 Top Class Call Girl Service Available
 
(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...
(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...
(Low Rate RASHMI ) Rate Of Call Girls Jaipur ❣ 8445551418 ❣ Elite Models & Ce...
 
Call Girls Coimbatore Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Coimbatore Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Coimbatore Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Coimbatore Just Call 9907093804 Top Class Call Girl Service Available
 
Call Girls Kochi Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Kochi Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Kochi Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Kochi Just Call 9907093804 Top Class Call Girl Service Available
 
Premium Call Girls Cottonpet Whatsapp 7001035870 Independent Escort Service
Premium Call Girls Cottonpet Whatsapp 7001035870 Independent Escort ServicePremium Call Girls Cottonpet Whatsapp 7001035870 Independent Escort Service
Premium Call Girls Cottonpet Whatsapp 7001035870 Independent Escort Service
 
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any TimeTop Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
Top Quality Call Girl Service Kalyanpur 6378878445 Available Call Girls Any Time
 
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...
♛VVIP Hyderabad Call Girls Chintalkunta🖕7001035870🖕Riya Kappor Top Call Girl ...
 
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...
(👑VVIP ISHAAN ) Russian Call Girls Service Navi Mumbai🖕9920874524🖕Independent...
 
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...
Night 7k to 12k Navi Mumbai Call Girl Photo 👉 BOOK NOW 9833363713 👈 ♀️ night ...
 
Premium Bangalore Call Girls Jigani Dail 6378878445 Escort Service For Hot Ma...
Premium Bangalore Call Girls Jigani Dail 6378878445 Escort Service For Hot Ma...Premium Bangalore Call Girls Jigani Dail 6378878445 Escort Service For Hot Ma...
Premium Bangalore Call Girls Jigani Dail 6378878445 Escort Service For Hot Ma...
 
Call Girls Gwalior Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 9907093804 Top Class Call Girl Service AvailableCall Girls Gwalior Just Call 9907093804 Top Class Call Girl Service Available
Call Girls Gwalior Just Call 9907093804 Top Class Call Girl Service Available
 

Social Web Network Analysis-Health Communication Networks

  • 1. Virtual Knowledge Studio (VKS) Social (Web) Network Analysis and Health Communication Asso. Prof. Dr. Han Woo PARK CyberEmotions Research Institute Dept. of Media & Communication YeungNam University 214-1 Dae-dong, Gyeongsan-si, Gyeongsangbuk-do 712-749 Republic of Korea http://www.hanpark.net http://eastasia.yu.ac.kr http://asia-triplehelix.org
  • 2. Health Networks Research Today • Effect of social networks on health status – Social support (both perceived and actual) – Social influence (such as attitudes or norms) – Access to resources (money, occupations, information, or knowledge) – Social involvement (both exclusion and inclusion) – Transmission of disease or disease-related factors (such as human immuno-deficiency virus and acquired immune deficiency syndrome (HIV/AIDS), mucus, and secondhand cigarette smoke) * Sharon L. Brennan (2012). Health Networks. Barnett, G. A. (ed). Encyclopedia of Social Networks. Thousands Oaks, CA: Sage Publisher. pp. 346-351.
  • 3. History of SNA Borgatti et al (2009) 3
  • 4. Health Networks Research Today • Theoretical rationale – People are interconnected, and thus their health is interconnected – Selection and homophily are two major concepts in health-related social network research. – Early studies focused on mortality and morbidity • Three main areas covered by social and communication scientists - The conceptulization of health and illness - The study of their measurement and social distribution - The explanation of patterns of health and illness * Sharon L. Brennan (2012). Health Networks. Barnett, G. A. (ed). Encyclopedia of Social Networks. Thousands Oaks, CA: Sage Publisher. pp. 346-351.
  • 5. You and Your Friend’s Friend’s Friends • NY Times
  • 6. 6
  • 7. 7
  • 8. 8
  • 9. Comparison with other methods Scott (1991), p.3
  • 10. Borgatti et al (2009) 10
  • 11. Types of SNA data • Whole-network method - Measuring all connections with others in group - Population • Ego-centric method - Snowballing - Sample • A combined method
  • 13. Bi-linked network of politically active A-list Korean citizen blogs (July 2005) URI=Centre DLP=Left GNP=Right Just A-list blogs exchanging links with politicians
  • 14. Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 15. * Co-inlink : a link to two different nodes from a third node * Co-outlink : A link from two different nodes to a third node Björneborn (2003)
  • 16. 관계모양별 네트워크 유형 C B C B C B A A A A B C D E D D D E E E < 스타형 > <Y 형 > < 체인형 > < 서클형 >
  • 17. 관계모양별 네트워크 유형 중심 노드 < 스타형 > <Y 형 > < 체인형 > < 서클형 > 중심화 비중심화  노드 (node): 사람  선 (line): 사람 간 커뮤니케이션의 잠재적인 채널 Borgatti et al (2009)
  • 18. 바베라스와 리빗의 실험 결과  1) 문제해결의 시간적 측면 스타형 , Y 형 > 체인형 , 서클형 ☞ 중심화 성향 (centralized)  2) 메시지 교환의 수 서클형 > 체인형 > 스타형 , Y 형  3) 참여한 사람들의 만족도 서클형 > 체인형 > Y 형 > 스타형
  • 19. 바베라스와 리빗의 실험 결과  4) 에러 (error) 발생 스타형 , Y 형 , 체인형 < 서클형 ☞ 에러 수정의 서클형에서 빈번  5) 자발적 리더발생 확률 서클형 > 체인형 > Y 형 > 스타형  6) 성과 향상 서클형 > 스타형 , Y 형 , 체인형
  • 20. 구조적 공백 / 틈새 / 혈 A B A B C C
  • 21. 구조적 공백 / 틈새 / 혈 open closed  왼쪽에 있는 Ego- 네트워크 : 많은 구조적 공백  오른쪽에 있는 Ego- 네트워크 : 적은 구조적 공백 Borgatti et al (2009)
  • 22. 구조적 공백 버 기업에서 승진을 잘 하는 사람이 실제로 연결망에 서 좋은 위치에 놓인 사람이라고 주장 트 나 나
  • 23. Centrality Indicators 지역단장  연결중심성 : 직접적으로 맺 은 관계가 많은 마당발 교육팀장 신입가족  매개중심성 : 브로커 , 중개자 , 매니저 부사장 부회장 회장 통제자 , 수문장 지점장 본부장  근접성 : 조직 구성원과 가장 빠르게 의사소통하는 확산자 , 팀장 방송국
  • 24. 조직내 확산을 연결 / 차단할 적임자는 ? 연결성 매개성 근접성 지역단장 신입가족 4 0.83 52.94 지역단장 3 0.00 50.00 교육팀장 신입가족 교육팀장 5 8.33 64.29 매니저 6 3.67 60.00 매니저 부사장 부회장 회장 지점장 4 0.83 52.94 팀장 3 0.00 50.00 지점장 본부장 본부장 5 8.33 64.29 부사장 3 14.00 60.00 팀장 부회장 2 8.00 42.86 회장 1 0.00 31.03
  • 25. NodeXL Cluster Coefficient: ' 친구의 친구를 아느냐 ' 를 보여주는 지표
  • 26. 네트워크 유형에 따른 중심성 B C E G F F D B A C E G (b)Circle (b)Circle D A D G F C E A B (a)Star (c)Line Star Circle Line 연결성 A 동일 F, G 제외 매개성 A 동일 A 근접성 A 동일 A
  • 27. 구글의 권위 지수 Page Rank Flow Betweenness high Level of Importance Level of Importance low
  • 28. 네트워크 유형과 확산 조정 메커니즘 < 네트워크 A> < 네트워크 B>
  • 30. 실습 : 각 번호에 해당하는 본인과 동료의 이름을 적으세요 7 2 6 1 8 3 11 5 4 10 9 22 23 21 25 24 12 13 19 20 18 14 17 26 15 16 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 31. Group, group member, liaison, isolates, dyad, tree 7 2 6 1 8 3 11 5 4 10 9 22 23 21 25 24 12 13 19 20 18 14 17 26 15 16 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 32. 7 2 6 1 8 3 11 5 4 10 9 22 23 21 25 24 12 13 19 20 18 14 17 26 15 16 Clustering Coefficient
  • 33. 연결성에서 당신은 얼마나 중요한 존재인가 ?
  • 34. 연결성에서 당신은 얼마나 중요한 존재인가 ?
  • 35. 매개성에서 당신은 얼마나 중요한 존재인가 ?
  • 36. 근접성에서 당신은 얼마나 중요한 존재인가 ?
  • 37. Group, group member, liaison, isolates, dyad, tree 7 2 6 1 8 3 11 5 4 10 9 22 23 21 25 24 12 13 19 20 18 14 17 26 15 16 1 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 38. 네트워크에서 당신은 얼마나 중요한 존재인가 ? 7 2 6 1 8 3 11 5 4 10 9 22 23 21 25 24 12 13 19 20 18 17 26 15 16 제거된 노드 수 1 파편화 정도 0.409 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 39. Group, group member, liaison, isolates, dyad, tree 7 2 6 1 8 3 11 5 4 10 9 22 23 21 25 24 12 13 19 20 18 14 17 26 15 16 2 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 40. 네트워크에서 당신은 얼마나 중요한 존재인가 ? 7 2 6 1 8 3 11 5 4 10 9 23 21 25 24 12 13 19 20 18 17 26 15 16 제거된 노드 수 2 파편화 정도 0.468 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 41. Group, group member, liaison, isolates, dyad, tree 7 2 6 1 8 3 11 5 4 10 9 22 23 21 25 24 12 13 19 20 18 14 17 26 15 16 3 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 42. 네트워크에서 당신은 얼마나 중요한 존재인가 ? 7 2 6 1 8 3 11 5 4 10 9 23 25 24 12 13 19 20 18 17 26 15 16 제거된 노드 수 3 파편화 정도 0.778 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 43. Group, group member, liaison, isolates, dyad, tree 7 2 6 1 8 3 11 5 4 10 9 22 23 21 25 24 12 13 19 20 18 14 17 26 15 16 4 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 44. 네트워크에서 당신은 얼마나 중요한 존재인가 ? 7 2 1 8 3 11 5 4 10 9 23 25 24 12 13 19 20 18 17 26 15 16 제거된 노드 수 4 파편화 정도 0.886 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 45. Group, group member, liaison, isolates, dyad, tree 7 2 6 1 8 3 11 5 4 10 9 22 23 21 25 24 12 13 19 20 18 14 17 26 15 16 5 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 46. 네트워크에서 당신은 얼마나 중요한 존재인가 ? 7 2 1 8 3 11 5 10 9 23 25 24 12 13 19 20 18 17 26 15 16 제거된 노드 수 5 파편화 정도 0.902 Group, group member, liaison, isolates, dyad, tree Richards (1995)
  • 47. 네트워크에서 당신은 얼마나 중요한 존재인가 ? 7 2 6 1 8 3 11 5 10 9 4 22 23 21 25 24 12 13 19 20 18 14 17 26 15 16 파편화 파편화 파편화 파편화 파편화 (1 개 노드 제거 ) (2 개 노드 제거 ) (3 개 노드 제거 ) (4 개 노드 제거 ) (5 개 노드 제거 ) 0.409 0.468 0.778 0.886 0.902 (14) (14/22) (14/22/21) (14/22/21/6) (14/22/21/6/4)
  • 50. Big data  Big data usually includes data sets with sizes beyond the ability of commonly-used software tools to capture, manage, and process the data within a tolerable elapsed time.  Big data sizes may vary per discipline.  Characteristics: Garner’s 3Vs plus SAS’s VC - Volume (amount of data), velocity (speed of data in and out), variety (range of data types and sources) - Variability: Data flows can be highly inconsistent with daily, seasonal, and event-triggered peak data loads - Complexity: Multiple data sources requiring cleaning, linking, and matching the data across systems.
  • 51.
  • 52.
  • 53.
  • 54. All models are wrong but some are useful - Emergence of data author on dataverse
  • 55. Big data and the end of theory?  Does big data have the answers? Maybe some, but not all, says - Mark Graham  In 2008, Chris Anderson, then editor of Wired, wrote a provocative piece titled The End of Theory. Anderson was referring to the ways that computers, algorithms, and big data can potentially generate more insightful, useful, accurate, or true results than specialists or domain experts who traditionally craft carefully targeted hypotheses and research strategies.  We may one day get to the point where sufficient quantities of big data can be harvested to answer all of the social questions that most concern us. I doubt it though. There will always be digital divides; always be uneven data shadows; and always be biases in how information and technology are used and produced.  And so we shouldn't forget the important role of specialists to contextualise and offer insights into what our data do, and maybe more importantly, don't tell us. http://www.guardian.co.uk/news/datablog/2012/mar/09/big-data-theory
  • 56. Health Networks Research Today CONNECTED: THE SURPRISING P OWER OF OUR SOCIAL NETWORKS AND HOW THEY SHAPE OUR LIVES By Nicholas A. Christakis and James H. Fowler Illustrated. 338 pp. Little, Brown & Company Nicholas Christakis: How social networks predict epidemics James Fowler - Back to the Village
  • 57. CSS Approach 1. development of webometric tools to automate social Internet research process (e.g., data collection and analysis from search engines, SNS and microblogging sites) 2. experimentation with new types of data visualization (e.g, HNA and dynamic geographical mappings using Google)
  • 58. Why CSS? Bonacich, P. (2004). The Invasion of the Physicists. Social Networks 26(3): 285-288 • Savage and Burrows (2007, p. 886) laments, “Fifty years ago, academic social scientists might be seen as occupying the apex of the – generally limited – social science research ‘apparatus’. Now they occupy an increasingly marginal position in the huge research infrastructure.
  • 62. “Webometrics refers to a set of research methods that illustrates texts and their web linkages as a network and quantitatively examine the spreadable aspects of web- mediated communication activities of social actors and issues (Jenkins, 2011), in comparison to traditional methods (Savage & Burrows, 2007; Salganik & Levy, 2012). ” (by Han Woo Park)
  • 63. Seminal publications: * 실시간 피인용률 보기  Garton, L., Haythornthwaite, C., & Wellman, B. (1997). Studying online social networks. Journal of Computer- Mediated Communication, 3(1).  Wellman, B. (2001). 'Computer networks as social networks,' Science,Vol. 293, Issue (14), pp. 2031-2034.  Park, H. W. (2003). Hyperlink network analysis: A new method for the study of social structure on the web. Connections, 25(1), 49-61 .  Park, H. W., & Thelwall, M. (2003). Hyperlink analyses of the World Wide Web: A review. Journal of Computer- Mediated Communication, 8(4).
  • 64. Recent special issues related to CSS  Special issues - Social Science Computer Review, 2011, 29(3) Theme: Social Networking Activities Across Countries - Asian Journal of Communication, 2011, 21(5), Theme: Online Social Capital and Participation in Asia-Pacific - Scientometrics, 2012, 90(2) Theme : Triple Helix and Innovation in Asia using Scientometrics, Webometrics, and Informetrics - Journal of Computer-Mediated Communication, 2012, 17(2) Theme: Hyperlinked Society
  • 65. Selected publications related to CSS  Recent publications - Park, H. W., Barnett, G. A., & Chung, C. J. (2011). Structural changes in the global hyperlink network: Centralization or diversification. Global networks. 11 (4). 522–542 - Lim, Y. S., & Park, H. W. (2011). How Do Congressional Members Appear on the Web?: Tracking the Web Visibility of South Korean Politicians. Government Information Quarterly. 28 (4), 514-521. - Sandra González-Bailón, Rafael E. Banchs and Andreas Kaltenbrunner (2012). Emotions, Public Opinion, and U.S. Presidential Approval Rates: A 5-Year Analysis of Online Political Discussions Human Communication Research - Sams, S., Park, H. W. (2012 forthcoming). The Presence of Hyperlinks and Messages on Social Networking Sites: A Case Study of Cyworld in Korea. Journal of Computer-Mediated Communication - Nam, Y., Lee, Y.-O., Park, H.W. (2013, March). Can web ecology provide a clearer understanding of people’s information behavior during election campaigns?. Social Science Information.
  • 66. Mike Thelwall: WA 2.0 http://lexiurl.wlv.ac.uk/index.html
  • 67. Prof. Han Woo PARK CyberEmotions Research Center Department of Media and Communincation, YeungNam University, Korea hanpark@ynu.ac.kr http://www.hanpark.net Formerly, World Class University Webometrics Institute WCU WEBOMETRICS INSTITUTE INVESTIGATING INTERNET-BASED POLITIC WITH E-RESEARCH TOOLS

Notas do Editor

  1. http://www.sfu.ca/~richards/Pages/negopy.htm
  2. Degree NrmDegree Share ------------ ------------ ------------ 1 Mean 3.538 14.154 0.000 2 Std Dev 1.575 6.298 0.000 3 Sum 92.000 368.000 0.000
  3. Degree NrmDegree Share ------------ ------------ ------------ 1 Mean 3.538 14.154 0.000 2 Std Dev 1.575 6.298 0.000 3 Sum 92.000 368.000 0.000
  4. 연구실 컴퓨터의 아이패드 사진 복사한 폴더에서 Science 잡지 특집호 그림을 여기에 .. 엠비씨 준비하던 것에 있는 거 아니가 ?