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Information Retrieval and Social Media
Prof.dr.ir. Arjen P. de Vries
arjen@acm.org
Lecture for the User-Centred Social Media Summer School
Duisburg, September 19, 2017
Social Media
Noun
social media (uncountable)
Interactive forms of media that allow users to interact with and publish to
each other, generally by means of the Internet.
The early 21st century saw a huge increase in social media thanks to the widespread availability of the
Internet.
Social Media
 “Social bookmarking” sites
 “User generated content”
- Images (flickr) and videos (youtube, vimeo), but also blogs, Wikipedia, etc.
 Social network services
- Twitter, facebook, instagram, snapchat
Not just one beast!
User contributed content
Permission based tagging, Set model
Bag model
Global Content
Free for all tagging
Social Media to help improve IR (1)
‘Co-creation’
 Social Media:
- Consumer becomes a co-creator
- Many ‘data consumption’ traces in social media are public
Richer information representations
Richer information representations
 User profiles
- User name, full name, description, image, homepage url, etc.
 Connections between users
- Networks of friends, followers, etc
 Comments/reactions
 Endorsing and sharing
E.g., Twitter
 Bio
- Often includes a geo-location of the profile
 Friends
 Followers
 Lists
- Groups followed Twitter accounts; lists can be followed
 Hashtags
 Mentions
User Demographics
 Gender from Tweet author’s first name
 Geographic location from profile
Diaz, Gamon, Hofman, Kiciman, Rothschild. Online and Social Media as an Imperfect Continuous
Panel Survey. In PLOS ONE, 2016
Detailed User Characteristics…
de Volkskrant, March 13, 2013
Michal Kosinski, David Stillwell, and
Thore Graepel. Private traits and
attributes are predictable from digital
records of human behavior. PNAS
2013.
Youyou, W., Kosinski, M. & Stillwell, D.
(2015) Computer-based personality
judgments are more accurate than
those made by humans. PNAS 2015.
… in Search
 Age and Gender, and perhaps also political and religious
views
 Maps both Page Likes from myPersonality dataset and
search results on a common space of ODP categories
 Learning approach to overcome the difference in
distribution between myPersonality data and Search data
- E.g., their FB dataset has 63% female, vs. only 47% in Bing
Bi, Kosinski, Shokouhi, Graepel. Inferring the Demographics of Search Users. WWW 2013
Many Opportunities for IR
 Expand content representation
 Reduce the vocabulary gap(s) between creators of
content (the indexers) and consumers of content (the
users)
 More diverse views on the same content
LibraryThing
 Items
 People
 Tags
 Ratings
Synonyms
Synonyms
Dissimilar users…
… with similar items
(Pearson Correlation)
Note: this representation ignored the item ratings
Examples
• Humour
• Classic
IR to help improve Social Media
LibraryThing – beyond terms
 Items
 People
 Tags
 Ratings
Maarten Clements, Arjen P. de Vries and Marcel J.T. Reinders. The task
dependent effect of tags and ratings on social media access. TOIS 28, 4, article
21 (November 2010), 42 pages.
Search with Random Walk
 Present nodes according to estimated probability that a
random walk that starts from (task dependent) starting
nodes, would end at this node
Tagging Relationships
Note: this representation used the item ratings in the user – item transitions
An item recommendation walk
Personalized Search
 Assume a user who types a single tag as query
 A soft clustering effect smoothly relates similar concepts
before converging to the background probability
 Homographs like “Java” are disambiguated because the
walk starts in both the query tag and the target user
- So, content that matches the user’s preference is more likely to
be found first
Expert Finding on Twitter
 Empirical evidence demonstrates that a mix of tweet text,
friends, followers and lists is most effective to infer
expertise
 Expertise ground truth taken from Quora, where (many)
users list their expertise and their social media accounts
Xu, Zhou and Lawless. Inferring your expertise from Twitter: combining multiple types of user activity.
WI ‘2017
Multiple Social Networks
 Accounts linked via services like about.me and Quora
 Users explicitly list their multiple accounts in one profile
 Missing data addressed via non-negative matrix
factorization (NMF)
- E.g., 57% list school in FB, 81% in LinkedIn
 Applied to various prediction tasks, e.g.,
topics users are interesting in
Social Media to help improve IR (2)
Relevant for Search… (1/4)
 Wikipedia contains semantically very rich annotations:
- Wikipedia Categories, Lists
- Times (1930, 1931, 1932, etc. etc.)
- Disambiguation pages
- Edit history
Etc.
Note: DBPedia is “just” Wikipedia 
Relevant for Search… (2/4)
 “Twanchor text”
- Tweets citing online media can be used as additional resources
describing the content, just like anchor text
Relevant for Search… (3/4)
 Geotags / POIs
- Recommend geo-locations to people
- Recommend people to geo-locations
- Predict a user’s whereabouts (or “trails”)
Relevant for Search… (4/4)
 Timestamps
- Helps reveal trends, e.g., which documents went viral?
- Allows to search “in the past”
Searching the Social Web
 Do not improve Web search with social annotations, but
improve search in Social
 Builds on the observation in prior work (Goel et al., 2016)
that virality is really different from popularity
- The most viral content is often distinct from the most popular
content being shared online
- Can we surface that content more easily?
Alonso, Kandylas, Tremblay, Hofman, Sen. What’s Happening and What Happened: Searching the
Social Web. WebSci ‘17.
Pipeline
 Content selection:
- Select tweets that contain links and satisfy simple user, content
and time range criteria
 User selection:
- Extract and normalize links and select those that have been
shared by a minimum number of trusted users
 Link selection:
- Clean-up links, compute link virality and popularity, cluster
similar links, and apply heuristic criteria to select good quality
links
 Annotations:
- Generate metadata for the selected links from the associated
tweets
Collecting Data
API Blues
Bit.ly API used in my own research:
/v3/link/content
deprecated
Note: This endpoint was deprecated on 10/15/2014.
API Blues
 The combination of rate limits and Terms of Service of
most social media platforms complicates our life
 Not even to mention volume
- TREC Microblog collection of 2013 “Tweets2013” consists of
107 GB compressed (for only 2 months of data!)
 Did I mention ToS?
- Mandatory continual processing of deletions…
Good News for Twitter
 The Internet Archive distributes two collections from 2013
that can be used as drop-in replacement for evaluation
purposes
 Deletions seem to affect non-relevant documents more
than relevant documents
Sequira and Lin. Finally, a Downloadable Test Collection of Tweets. SIGIR 2017.
Social Media as Panel Survey
 Online population is a non-representative sample of the
off-line world
 Demographic skew and user participation is non-
stationary and difficult to predict over time
- E.g., women are underrepresented in the raw volume of tweets,
but tweet more often about politics than men
- Half of the activity on a specific debate came from individuals
who had not previously posted about the election
Diaz, Gamon, Hofman, Kiciman, Rothschild. Online and Social Media as an Imperfect Continuous
Panel Survey. In PLOS ONE, 2016
Fred Morstatter, Jürgen Pfeffer, Huan Liu and
Kathleen M. Carley. Is the Sample Good
Enough? Comparing Data from Twitter’s
Streaming API with Twitter’s Firehose.
ICWSM 2013
API Blues
Take home message(s)
Take home message(s)
• Social media give access to a rich resource of context
- Including time & location!
Take home message(s)
• Social media give access to a rich resource of context
- Including time & location!
• The academic’s alternative to click data?
Take home message(s)
• Social media give access to a rich resource of context
- Including time & location!
• The academic’s alternative to click data?
• A big open research question:
Can one theory (about matching users and content) address the
complete spectrum of IR tasks that arise in social media?

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Information Retrieval and Social Media

  • 1. Information Retrieval and Social Media Prof.dr.ir. Arjen P. de Vries arjen@acm.org Lecture for the User-Centred Social Media Summer School Duisburg, September 19, 2017
  • 2. Social Media Noun social media (uncountable) Interactive forms of media that allow users to interact with and publish to each other, generally by means of the Internet. The early 21st century saw a huge increase in social media thanks to the widespread availability of the Internet.
  • 3. Social Media  “Social bookmarking” sites  “User generated content” - Images (flickr) and videos (youtube, vimeo), but also blogs, Wikipedia, etc.  Social network services - Twitter, facebook, instagram, snapchat
  • 4.
  • 5.
  • 6.
  • 7.
  • 8. Not just one beast!
  • 11. Bag model Global Content Free for all tagging
  • 12. Social Media to help improve IR (1)
  • 13. ‘Co-creation’  Social Media: - Consumer becomes a co-creator - Many ‘data consumption’ traces in social media are public
  • 15. Richer information representations  User profiles - User name, full name, description, image, homepage url, etc.  Connections between users - Networks of friends, followers, etc  Comments/reactions  Endorsing and sharing
  • 16. E.g., Twitter  Bio - Often includes a geo-location of the profile  Friends  Followers  Lists - Groups followed Twitter accounts; lists can be followed  Hashtags  Mentions
  • 17. User Demographics  Gender from Tweet author’s first name  Geographic location from profile Diaz, Gamon, Hofman, Kiciman, Rothschild. Online and Social Media as an Imperfect Continuous Panel Survey. In PLOS ONE, 2016
  • 18. Detailed User Characteristics… de Volkskrant, March 13, 2013 Michal Kosinski, David Stillwell, and Thore Graepel. Private traits and attributes are predictable from digital records of human behavior. PNAS 2013. Youyou, W., Kosinski, M. & Stillwell, D. (2015) Computer-based personality judgments are more accurate than those made by humans. PNAS 2015.
  • 19. … in Search  Age and Gender, and perhaps also political and religious views  Maps both Page Likes from myPersonality dataset and search results on a common space of ODP categories  Learning approach to overcome the difference in distribution between myPersonality data and Search data - E.g., their FB dataset has 63% female, vs. only 47% in Bing Bi, Kosinski, Shokouhi, Graepel. Inferring the Demographics of Search Users. WWW 2013
  • 20. Many Opportunities for IR  Expand content representation  Reduce the vocabulary gap(s) between creators of content (the indexers) and consumers of content (the users)  More diverse views on the same content
  • 23. Synonyms Dissimilar users… … with similar items (Pearson Correlation) Note: this representation ignored the item ratings
  • 24.
  • 26. IR to help improve Social Media
  • 27. LibraryThing – beyond terms  Items  People  Tags  Ratings
  • 28. Maarten Clements, Arjen P. de Vries and Marcel J.T. Reinders. The task dependent effect of tags and ratings on social media access. TOIS 28, 4, article 21 (November 2010), 42 pages.
  • 29. Search with Random Walk  Present nodes according to estimated probability that a random walk that starts from (task dependent) starting nodes, would end at this node
  • 31. Note: this representation used the item ratings in the user – item transitions
  • 33. Personalized Search  Assume a user who types a single tag as query
  • 34.  A soft clustering effect smoothly relates similar concepts before converging to the background probability
  • 35.  Homographs like “Java” are disambiguated because the walk starts in both the query tag and the target user - So, content that matches the user’s preference is more likely to be found first
  • 36. Expert Finding on Twitter  Empirical evidence demonstrates that a mix of tweet text, friends, followers and lists is most effective to infer expertise  Expertise ground truth taken from Quora, where (many) users list their expertise and their social media accounts Xu, Zhou and Lawless. Inferring your expertise from Twitter: combining multiple types of user activity. WI ‘2017
  • 37. Multiple Social Networks  Accounts linked via services like about.me and Quora  Users explicitly list their multiple accounts in one profile  Missing data addressed via non-negative matrix factorization (NMF) - E.g., 57% list school in FB, 81% in LinkedIn  Applied to various prediction tasks, e.g., topics users are interesting in
  • 38. Social Media to help improve IR (2)
  • 39. Relevant for Search… (1/4)  Wikipedia contains semantically very rich annotations: - Wikipedia Categories, Lists - Times (1930, 1931, 1932, etc. etc.) - Disambiguation pages - Edit history Etc. Note: DBPedia is “just” Wikipedia 
  • 40. Relevant for Search… (2/4)  “Twanchor text” - Tweets citing online media can be used as additional resources describing the content, just like anchor text
  • 41. Relevant for Search… (3/4)  Geotags / POIs - Recommend geo-locations to people - Recommend people to geo-locations - Predict a user’s whereabouts (or “trails”)
  • 42. Relevant for Search… (4/4)  Timestamps - Helps reveal trends, e.g., which documents went viral? - Allows to search “in the past”
  • 43. Searching the Social Web  Do not improve Web search with social annotations, but improve search in Social  Builds on the observation in prior work (Goel et al., 2016) that virality is really different from popularity - The most viral content is often distinct from the most popular content being shared online - Can we surface that content more easily? Alonso, Kandylas, Tremblay, Hofman, Sen. What’s Happening and What Happened: Searching the Social Web. WebSci ‘17.
  • 44.
  • 45. Pipeline  Content selection: - Select tweets that contain links and satisfy simple user, content and time range criteria  User selection: - Extract and normalize links and select those that have been shared by a minimum number of trusted users  Link selection: - Clean-up links, compute link virality and popularity, cluster similar links, and apply heuristic criteria to select good quality links  Annotations: - Generate metadata for the selected links from the associated tweets
  • 46.
  • 48. API Blues Bit.ly API used in my own research: /v3/link/content deprecated Note: This endpoint was deprecated on 10/15/2014.
  • 49. API Blues  The combination of rate limits and Terms of Service of most social media platforms complicates our life  Not even to mention volume - TREC Microblog collection of 2013 “Tweets2013” consists of 107 GB compressed (for only 2 months of data!)  Did I mention ToS? - Mandatory continual processing of deletions…
  • 50. Good News for Twitter  The Internet Archive distributes two collections from 2013 that can be used as drop-in replacement for evaluation purposes  Deletions seem to affect non-relevant documents more than relevant documents Sequira and Lin. Finally, a Downloadable Test Collection of Tweets. SIGIR 2017.
  • 51. Social Media as Panel Survey  Online population is a non-representative sample of the off-line world  Demographic skew and user participation is non- stationary and difficult to predict over time - E.g., women are underrepresented in the raw volume of tweets, but tweet more often about politics than men - Half of the activity on a specific debate came from individuals who had not previously posted about the election Diaz, Gamon, Hofman, Kiciman, Rothschild. Online and Social Media as an Imperfect Continuous Panel Survey. In PLOS ONE, 2016
  • 52. Fred Morstatter, Jürgen Pfeffer, Huan Liu and Kathleen M. Carley. Is the Sample Good Enough? Comparing Data from Twitter’s Streaming API with Twitter’s Firehose. ICWSM 2013 API Blues
  • 54. Take home message(s) • Social media give access to a rich resource of context - Including time & location!
  • 55. Take home message(s) • Social media give access to a rich resource of context - Including time & location! • The academic’s alternative to click data?
  • 56. Take home message(s) • Social media give access to a rich resource of context - Including time & location! • The academic’s alternative to click data? • A big open research question: Can one theory (about matching users and content) address the complete spectrum of IR tasks that arise in social media?