SlideShare a Scribd company logo
1 of 27
Download to read offline
Visual Analytics
 Ksenia Kharadzhieva
Structure of the Presentation
●   Visualization and integrated disciplines
●   Goals of visual analytics
●   Aspects of visual analytic, relevant to our PG
●   Tools and frameworks for visual analytics
●   What can be implemented?
Integrated disciplines




                         [1]
Goals of Visual Analytics

●   presentation of data in an understandable way
●   analysis of large datasets
●   derivation of relevant data from large datasets
●   discovering hidden information, patterns, trends
●   providing instruments for interaction with data
Considered aspects of Visual Analytics

●   Space and time visualization
●   Plagiarism visualization
●   Visualization of social networks
●   Visualization of scientific collaboration
●   Perception and cognitive aspects
Temporal and Geospatial Visualization
●   Geospatial data is different from usual statistical data.
●   Toblers first law: "everything is related to everything else,
    but near things are more related than distant things".
●   Data is often uncertain: errors, missing values, deviations.
●   Hierarchical scale of time; different types of time: linear and
    cyclic, branching and multiple perspectives.




                                                                    [1]
Space-time cube




                  [1]
Linear and cyclic representation




                                   [1]
Plagiarism Visualization




                           [9]
Plagiarism Visualization




                           [9]
Visualization of Social Networks




                                   [2]
Visualization of Social Networks




                                   [3]
Visualization of Scientific
      Collaboration




                              [4]
Perception and Cognition
●   "Visual perception is the means by which people interpret
    their surroundings and for that matter, images on a computer
    display".
●   "Cognition is the ability to understand this visual
    information, making inferences largely based on prior
    learning".
●   "Knowledge of how we ’think visually’ is important in the
    design of user interfaces."




                                                                [1]
Perception and Cognition




                           [1]
Perception and Cognition




                           [1]
Libraries and Frameworks
    for Visualization
OpenGL
●   "OpenGL (for Open Graphics Library) is a software
    interface to graphics hardware."
●   Interface: a set of several hundred procedures and functions
●   Enables specifying the objects and operations for producing
    high-quality graphical images




                                                               [6]
OpenGL: Visualization of Contacts in
            Twitter




                                       [7]
Gephi
●   graph and network visualization
●   allows to work with complex and
    large data sets
●   extensive functionality:
    importing, visualizing,
    spatializing, altering,
    manipulating and exporting
●   extensibility: tools and fitures can
    be added



                                      [8]
Gapminder
     ●   Designed to make world
         census data available to a
         wider audience
     ●   Two-dimentional chart, use
         of colour and size
     ●   Allowes the user to explore
         the change of the variables
         over time




                                  [10]
What can we implement?
Geospatial and Temporal Visualization
                   ●   Nodes represent research
                       institutions
                   ●   Thickness of connection
                       lines depends on number of
                       co-authorships
                   ●   Enabling change of time
                       dinamically and observe
                       changes
                   ●   Filtering


                                                  [5]
Visualization of Plagiarism
                  ●   Each page is a little square
                  ●   Depending on percentage of
                      plagiarised content each page has
                      a colour from green to red
                  ●   Opportunity to see percentage of
                      plagiaism of a chosen page, its
0%         100%       contents and used sources
Bibliographic Coupling
           ●   If paper cite the same
               sources, they are connected
               with an arc
           ●   Thickness depends on
               number of common citings
           ●   Alternative visualization:
               similarity between papers
Thank you!
References
1. D.A. Keim, J. Kohlhammer, G. Ellis, and F. Mansmann. Mastering the Information
   Age - Solving Problems with Visual Analytics. Florian Mansmann.
2. http://www.guardian.co.uk/
3. http://www.facebook.com/
4. Erik Duval Till Nagel. Interactive exploration of geospatial network visualization.
   2011.
5. http://maps.google.com/
6. Mark Segal and Kurt Akeley. The opengl graphics system: A specication, 2011.
7. http://uglyhack.appspot.com/twittergraph/
8. https://gephi.org/
9. http://de.guttenplag.wikia.com/wiki/GuttenPlag_Wiki
10.http://www.gapminder.org/

More Related Content

What's hot

Visualization concept maps
Visualization concept mapsVisualization concept maps
Visualization concept maps
Melda Yildiz
 
Database gis fundamentals
Database gis fundamentalsDatabase gis fundamentals
Database gis fundamentals
Sumant Diwakar
 
General introduction to computer vision
General introduction to computer visionGeneral introduction to computer vision
General introduction to computer vision
butest
 

What's hot (20)

GIS
GISGIS
GIS
 
Application in Augmented and Virtual Reality
Application in Augmented and Virtual RealityApplication in Augmented and Virtual Reality
Application in Augmented and Virtual Reality
 
GIS based Decision Support System
GIS based Decision Support SystemGIS based Decision Support System
GIS based Decision Support System
 
Object Based Image Analysis
Object Based Image Analysis Object Based Image Analysis
Object Based Image Analysis
 
You Only Look Once: Unified, Real-Time Object Detection
You Only Look Once: Unified, Real-Time Object DetectionYou Only Look Once: Unified, Real-Time Object Detection
You Only Look Once: Unified, Real-Time Object Detection
 
[공간정보시스템 개론] L10 수치표고모델
[공간정보시스템 개론] L10 수치표고모델[공간정보시스템 개론] L10 수치표고모델
[공간정보시스템 개론] L10 수치표고모델
 
Deep sort and sort paper introduce presentation
Deep sort and sort paper introduce presentationDeep sort and sort paper introduce presentation
Deep sort and sort paper introduce presentation
 
Face recognition
Face recognitionFace recognition
Face recognition
 
Digital image processing
Digital image processingDigital image processing
Digital image processing
 
Face Detection
Face DetectionFace Detection
Face Detection
 
Visualization concept maps
Visualization concept mapsVisualization concept maps
Visualization concept maps
 
TYBSC IT PGIS Unit I Chapter II Geographic Information and Spacial Database
TYBSC IT PGIS Unit I Chapter II Geographic Information and Spacial DatabaseTYBSC IT PGIS Unit I Chapter II Geographic Information and Spacial Database
TYBSC IT PGIS Unit I Chapter II Geographic Information and Spacial Database
 
Computer vision
Computer visionComputer vision
Computer vision
 
MODULE 2 computer vision part 2 depth estimation
MODULE 2 computer vision part 2 depth estimationMODULE 2 computer vision part 2 depth estimation
MODULE 2 computer vision part 2 depth estimation
 
Computer Vision
Computer VisionComputer Vision
Computer Vision
 
Gis unit 3
Gis   unit 3Gis   unit 3
Gis unit 3
 
Database gis fundamentals
Database gis fundamentalsDatabase gis fundamentals
Database gis fundamentals
 
General introduction to computer vision
General introduction to computer visionGeneral introduction to computer vision
General introduction to computer vision
 
Automated features extraction from satellite images.
Automated features extraction from satellite images.Automated features extraction from satellite images.
Automated features extraction from satellite images.
 
Object extraction from satellite imagery using deep learning
Object extraction from satellite imagery using deep learningObject extraction from satellite imagery using deep learning
Object extraction from satellite imagery using deep learning
 

Similar to Visual Analytics

Introduction to building wireframes
Introduction to building wireframesIntroduction to building wireframes
Introduction to building wireframes
Hong Qu
 

Similar to Visual Analytics (20)

30_Eden.ppt
30_Eden.ppt30_Eden.ppt
30_Eden.ppt
 
Benoit Visual Only Retrieval
Benoit Visual Only RetrievalBenoit Visual Only Retrieval
Benoit Visual Only Retrieval
 
2022 COMP4010 Lecture5: AR Prototyping
2022 COMP4010 Lecture5: AR Prototyping2022 COMP4010 Lecture5: AR Prototyping
2022 COMP4010 Lecture5: AR Prototyping
 
Seminar 2019 at CSE
Seminar 2019 at CSESeminar 2019 at CSE
Seminar 2019 at CSE
 
3D Internet
3D Internet 3D Internet
3D Internet
 
Unfolding - Workshop at RCA
Unfolding - Workshop at RCAUnfolding - Workshop at RCA
Unfolding - Workshop at RCA
 
Introduction to User Experience Design 10/07/17
Introduction to User Experience Design 10/07/17Introduction to User Experience Design 10/07/17
Introduction to User Experience Design 10/07/17
 
Introduction to User Experience Design 02/17/18
Introduction to User Experience Design 02/17/18Introduction to User Experience Design 02/17/18
Introduction to User Experience Design 02/17/18
 
OER World Map Project
OER World Map Project OER World Map Project
OER World Map Project
 
Introduction to building wireframes
Introduction to building wireframesIntroduction to building wireframes
Introduction to building wireframes
 
COMP 4010 Lecture 9 AR Interaction
COMP 4010 Lecture 9 AR InteractionCOMP 4010 Lecture 9 AR Interaction
COMP 4010 Lecture 9 AR Interaction
 
Introduction to User Experience Design 06/22/18
Introduction to User Experience Design 06/22/18Introduction to User Experience Design 06/22/18
Introduction to User Experience Design 06/22/18
 
Introduction to User Experience Design 12/08/18
Introduction to User Experience Design 12/08/18Introduction to User Experience Design 12/08/18
Introduction to User Experience Design 12/08/18
 
Introduction to User Experience Design 10/06/18
Introduction to User Experience Design 10/06/18Introduction to User Experience Design 10/06/18
Introduction to User Experience Design 10/06/18
 
Introduction to User Experience Design 10/05/19
Introduction to User Experience Design 10/05/19Introduction to User Experience Design 10/05/19
Introduction to User Experience Design 10/05/19
 
Collaborative Immersive Analytics
Collaborative Immersive AnalyticsCollaborative Immersive Analytics
Collaborative Immersive Analytics
 
Game Design 2 (2013): Lecture 5 - Game UI Prototyping
Game Design 2 (2013): Lecture 5 - Game UI PrototypingGame Design 2 (2013): Lecture 5 - Game UI Prototyping
Game Design 2 (2013): Lecture 5 - Game UI Prototyping
 
Only Time Will Tell: Modelling Information Diffusion in Code Review with Time...
Only Time Will Tell: Modelling Information Diffusion in Code Review with Time...Only Time Will Tell: Modelling Information Diffusion in Code Review with Time...
Only Time Will Tell: Modelling Information Diffusion in Code Review with Time...
 
STI Summit 2011 - Visual analytics and linked data
STI Summit 2011 - Visual analytics and linked dataSTI Summit 2011 - Visual analytics and linked data
STI Summit 2011 - Visual analytics and linked data
 
Introduction to User Experience Design 2/16/19
Introduction to User Experience Design 2/16/19Introduction to User Experience Design 2/16/19
Introduction to User Experience Design 2/16/19
 

Recently uploaded

BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
SoniaTolstoy
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
QucHHunhnh
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
ciinovamais
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
QucHHunhnh
 

Recently uploaded (20)

BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdf
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpin
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
Measures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDMeasures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SD
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
Disha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdfDisha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdf
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
Unit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxUnit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptx
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..
 
Mattingly "AI & Prompt Design: The Basics of Prompt Design"
Mattingly "AI & Prompt Design: The Basics of Prompt Design"Mattingly "AI & Prompt Design: The Basics of Prompt Design"
Mattingly "AI & Prompt Design: The Basics of Prompt Design"
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdf
 

Visual Analytics

  • 1. Visual Analytics Ksenia Kharadzhieva
  • 2. Structure of the Presentation ● Visualization and integrated disciplines ● Goals of visual analytics ● Aspects of visual analytic, relevant to our PG ● Tools and frameworks for visual analytics ● What can be implemented?
  • 4. Goals of Visual Analytics ● presentation of data in an understandable way ● analysis of large datasets ● derivation of relevant data from large datasets ● discovering hidden information, patterns, trends ● providing instruments for interaction with data
  • 5. Considered aspects of Visual Analytics ● Space and time visualization ● Plagiarism visualization ● Visualization of social networks ● Visualization of scientific collaboration ● Perception and cognitive aspects
  • 6. Temporal and Geospatial Visualization ● Geospatial data is different from usual statistical data. ● Toblers first law: "everything is related to everything else, but near things are more related than distant things". ● Data is often uncertain: errors, missing values, deviations. ● Hierarchical scale of time; different types of time: linear and cyclic, branching and multiple perspectives. [1]
  • 8. Linear and cyclic representation [1]
  • 11. Visualization of Social Networks [2]
  • 12. Visualization of Social Networks [3]
  • 13. Visualization of Scientific Collaboration [4]
  • 14. Perception and Cognition ● "Visual perception is the means by which people interpret their surroundings and for that matter, images on a computer display". ● "Cognition is the ability to understand this visual information, making inferences largely based on prior learning". ● "Knowledge of how we ’think visually’ is important in the design of user interfaces." [1]
  • 17. Libraries and Frameworks for Visualization
  • 18. OpenGL ● "OpenGL (for Open Graphics Library) is a software interface to graphics hardware." ● Interface: a set of several hundred procedures and functions ● Enables specifying the objects and operations for producing high-quality graphical images [6]
  • 19. OpenGL: Visualization of Contacts in Twitter [7]
  • 20. Gephi ● graph and network visualization ● allows to work with complex and large data sets ● extensive functionality: importing, visualizing, spatializing, altering, manipulating and exporting ● extensibility: tools and fitures can be added [8]
  • 21. Gapminder ● Designed to make world census data available to a wider audience ● Two-dimentional chart, use of colour and size ● Allowes the user to explore the change of the variables over time [10]
  • 22. What can we implement?
  • 23. Geospatial and Temporal Visualization ● Nodes represent research institutions ● Thickness of connection lines depends on number of co-authorships ● Enabling change of time dinamically and observe changes ● Filtering [5]
  • 24. Visualization of Plagiarism ● Each page is a little square ● Depending on percentage of plagiarised content each page has a colour from green to red ● Opportunity to see percentage of plagiaism of a chosen page, its 0% 100% contents and used sources
  • 25. Bibliographic Coupling ● If paper cite the same sources, they are connected with an arc ● Thickness depends on number of common citings ● Alternative visualization: similarity between papers
  • 27. References 1. D.A. Keim, J. Kohlhammer, G. Ellis, and F. Mansmann. Mastering the Information Age - Solving Problems with Visual Analytics. Florian Mansmann. 2. http://www.guardian.co.uk/ 3. http://www.facebook.com/ 4. Erik Duval Till Nagel. Interactive exploration of geospatial network visualization. 2011. 5. http://maps.google.com/ 6. Mark Segal and Kurt Akeley. The opengl graphics system: A specication, 2011. 7. http://uglyhack.appspot.com/twittergraph/ 8. https://gephi.org/ 9. http://de.guttenplag.wikia.com/wiki/GuttenPlag_Wiki 10.http://www.gapminder.org/