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Sébastien Heymann <seb@gephi.org>
Exploratory Network Analysis




                                      2   interact in real time
      1    see the network
                                     Gephi prototype (2008)
  1st graph viz tool: Pajek (1996)   group, filter, compute metrics...
  Vladimir Batagelj, Andrej Mrvar


  3       build a visual language
 size by rank, color by partition,
 label, curved edges, thickness...
Looking for Orderness in Data


         Make varying 3 cursors simultaneously to extract
      meaningful patterns (statistical and structural properties)


MICRO level            MACRO level
                                          at different levels


1 dimension            N dimensions
                                          on multiple dimensions


T+0                            T+N
                                          at time scale
“Zoom” cursor on Quantitative Data

MICRO level   MACRO level

                            Global
                            - connectivity
                            - density
                            - centralization

                            Local
                            - communities
                            - bridges between communities
                            - local centers vs periphery

                            Individual
                            - centrality
                            - distances
                            - neighborhood
                            - location
                            - local authority vs hub
“Crossing” cursor on Qualitative Data

1 dimension           N dimensions


Social
- who with whom
- communities
- brokerage
- influence and power
- homophily

Semantic
- topics
- thematic clusters

Geographic
- spatial phenomena
“Timeline” cursor on Temporal Data

T+0                        T+N




Evolution of social ties

Evolution of communities

Evolution of topics
Mapping an Innovation Center
Collaborations on projects at Images et Réseaux



                                     Themes and content




                                     Actors




                                     Territory


                     Franck Ghitalla & Ecole de Design de Nantes
Gephi in a Nutshell


                « Like Photoshop™ for graphs. »

   Helps data analysts to reveal patterns and trends,
    highlight outliers and tells story with their data.


•	Network visualization platform
•	Open source, supported by a community
•	Built for performance and usability
•	Extensible by plug-ins
•	Windows, MacOS X, Linux
Gephi Community




                  Nonprofit organization




  Communities     Contributors
                  Mathieu Bastian, Mathieu Jacomy,
                  Eduardo Ramos Ibañez, Sébastien
                  Heymann, Guillaume Ceccarelli,
                  André Panisson, Antonio Patriarca,
                  Cezary Bartosiak, Martin Škurla,
                  Patrick McSweeney, Yi Du, Hélder
                  Suzuki, Daniel Bernardes, Ernesto
                  Aneiro, Keheliya Gallaba, Luiz
                  Ribeiro, Urban Škudnik, Vojtech
                  Bardiovsky, Yudi Xue
Community Mission


         Provide a “sustainable” software

         Maintain the technical ecosystem

            Build a business ecosystem

  Face cutting-edge technological challenges with
                a long-term vision

      Distribute the software in Open Source
Community Values


  Open innovation: ideas and features come from
             the entire community.

      Decisions are taken with transparency.

   We consider this technology as a public good,
         and will keep it in open source.
Diversity of Usages

business              leisure :-)




communication         academic      art
Diversity of Network Encoding


V = { a, b, c, d, e }                                  <graph>
E = { (a,b), (a,d), (b,c), (e,a), (c,e) }                   <nodes>
                                                               <node id=”a” />
                                                               <node id=”b” />
                   Textual                                     <node id=”c” />
                                                               <node id=”d” />
                                                               <node id=”e” />
                                                            </nodes>
                                                            <edges>
                                                               <edge source=”a” target=”b” />
                                                               <edge source=”a” target=”d” />
           a   b   c   d   e                                   <edge source=”b” target=”c” />
       a   -   1   -   1   -                                   <edge source=”e” target=”a” />
                                                               <edge source=”c” target=”e” />
       b   -   -   1   -   -
                                                            </edges>
       c   -   -   -   -   1                           </graph>
       d   -   -   -   -   -
       e   1   -   -   -   -                                            XML
                                        Graphical
           Tabular

                                                    and many others...
Software I/O




                             }
    MySQL
 PostgreSL
SQL Server
                databases        user input
    Neo4j

             CSV                                  CSV
             Pajek NET                            Pajek NET     file
             Guess GDF                            Guess GDF


                                              >
             GEXF                                 GEXF
             GraphML                              GraphML
   file      Graphviz DOT                         Excel Spreadsheet
             UCInet DL                            SVG
             NetdrawVNA                           PDF
             Tulip TLP                            PNG
             Excel Spreadsheet



 graph streaming

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Gephi short introduction

  • 2.
  • 3. Exploratory Network Analysis 2 interact in real time 1 see the network Gephi prototype (2008) 1st graph viz tool: Pajek (1996) group, filter, compute metrics... Vladimir Batagelj, Andrej Mrvar 3 build a visual language size by rank, color by partition, label, curved edges, thickness...
  • 4. Looking for Orderness in Data Make varying 3 cursors simultaneously to extract meaningful patterns (statistical and structural properties) MICRO level MACRO level at different levels 1 dimension N dimensions on multiple dimensions T+0 T+N at time scale
  • 5. “Zoom” cursor on Quantitative Data MICRO level MACRO level Global - connectivity - density - centralization Local - communities - bridges between communities - local centers vs periphery Individual - centrality - distances - neighborhood - location - local authority vs hub
  • 6. “Crossing” cursor on Qualitative Data 1 dimension N dimensions Social - who with whom - communities - brokerage - influence and power - homophily Semantic - topics - thematic clusters Geographic - spatial phenomena
  • 7. “Timeline” cursor on Temporal Data T+0 T+N Evolution of social ties Evolution of communities Evolution of topics
  • 8. Mapping an Innovation Center Collaborations on projects at Images et Réseaux Themes and content Actors Territory Franck Ghitalla & Ecole de Design de Nantes
  • 9. Gephi in a Nutshell « Like Photoshop™ for graphs. » Helps data analysts to reveal patterns and trends, highlight outliers and tells story with their data. • Network visualization platform • Open source, supported by a community • Built for performance and usability • Extensible by plug-ins • Windows, MacOS X, Linux
  • 10. Gephi Community Nonprofit organization Communities Contributors Mathieu Bastian, Mathieu Jacomy, Eduardo Ramos Ibañez, Sébastien Heymann, Guillaume Ceccarelli, André Panisson, Antonio Patriarca, Cezary Bartosiak, Martin Škurla, Patrick McSweeney, Yi Du, Hélder Suzuki, Daniel Bernardes, Ernesto Aneiro, Keheliya Gallaba, Luiz Ribeiro, Urban Škudnik, Vojtech Bardiovsky, Yudi Xue
  • 11. Community Mission Provide a “sustainable” software Maintain the technical ecosystem Build a business ecosystem Face cutting-edge technological challenges with a long-term vision Distribute the software in Open Source
  • 12. Community Values Open innovation: ideas and features come from the entire community. Decisions are taken with transparency. We consider this technology as a public good, and will keep it in open source.
  • 13. Diversity of Usages business leisure :-) communication academic art
  • 14. Diversity of Network Encoding V = { a, b, c, d, e } <graph> E = { (a,b), (a,d), (b,c), (e,a), (c,e) } <nodes> <node id=”a” /> <node id=”b” /> Textual <node id=”c” /> <node id=”d” /> <node id=”e” /> </nodes> <edges> <edge source=”a” target=”b” /> <edge source=”a” target=”d” /> a b c d e <edge source=”b” target=”c” /> a - 1 - 1 - <edge source=”e” target=”a” /> <edge source=”c” target=”e” /> b - - 1 - - </edges> c - - - - 1 </graph> d - - - - - e 1 - - - - XML Graphical Tabular and many others...
  • 15. Software I/O } MySQL PostgreSL SQL Server databases user input Neo4j CSV CSV Pajek NET Pajek NET file Guess GDF Guess GDF > GEXF GEXF GraphML GraphML file Graphviz DOT Excel Spreadsheet UCInet DL SVG NetdrawVNA PDF Tulip TLP PNG Excel Spreadsheet graph streaming