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Social-Aware Collaborative Visualization for Large Scientific Projects Kwan-Liu Ma and Chaoli Wang CTS’085/21/2008
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What is a collaboratory? A “center without walls” [Wulf 93], in which researchers can Perform research regardless of physical locations Interact with colleagues Make use of instrumentation Share data and computational resources Access information in digital libraries
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Examples of collaboratory Upper Atmospheric Research Collaboratory, 1993 Multidisciplinary research collaboration for space scientists TeleMed, 1997 International health care collaboratory DOE National Collaboratories Program, 1998 Particle Physics Data Grid Collaboratory Pilot Earth System Grid II National Fusion Collaboratory Collaboratory for Multi-Scale Chemical Science Open scientific discovery infrastructure DOE Science Grid, 2001 NSF TeraGrid, 2001
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Functions of current collaboratories Data repository Tool warehouse Computing resource Web-interface for information retrieval What are missing? Social context and activities Collective analysis
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Social-aware collaboration Users Data Tools Annotation s Logs Emails Tool/data centric User centric
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Social context of collaboration Key challenges in creating a collaboratory Social rather than technical [Henline 98] A collaboratory is an organizational form Also includes social process [Cogburn 03] Users of collaboratory 17 to 215 users per collaboratory, 1992 to 2000 [Sonnenwald 03] Communication could be large and complex
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Next-generation collaboratory Support social aspect of collaboration Associations between data and users Interactions and communications among users Visualization and analysis Social context and activities Heterogeneous information (text, table, graph, image, and animation etc.) Knowledge discovery Extraction, consolidation, and utilization Share knowledge about the data
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Where and how to collect social data Source of social data Log, annotation, email, instance messenger, wiki website … How to collect them Automatic recording user activities Data mining for information retrieval Related issues Context vs. content Security and privacy
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Social context & activities Annotizer [Jung et al. 06] An online annotation system for creating, sharing, and searching annotations on existing HTML contents OntoVis [Shen et al. 06] A visual analytics tool for understanding large, heterogeneous social networks VICA [Wang et al. 07] A Vornoni interface for visualizing collaborative annotations
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OntoVis Large, heterogeneous social network Techniques Semantic abstraction Structural abstraction Importance filtering Example: the movie network Eight node types Person, movie, role, studio, distributor, genre, award, and country 35,312 nodes, 108,212 links
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Ontology graph Node size: disparity of connected types for each node type # on edge: frequencies of links between two types
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OntoVis – semantic abstraction Visualization of all the people have played any of the five roles: hero, scientist, love interest, sidekick, and wimp Red nodes are roles and blue nodes are actors
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OntoVis – structural abstraction Abstraction of the visualization of five roles and related actors
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OntoVis – importance filtering The three major genres (in green) of Woody Allen’s movies are comedy, romantic, and drama
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Online collaboration system of International Linear Collider (ILC) project Researchers from the US, Japan, and Germany Collaborative annotation feature ModeVis Interface Simulation run Image Animation
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VICA Simulation run Color: authorship Thickness: size # layers: # annotations
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VICA – hit count saturation
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VICA – author focus
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Collective analysis Design gallery [Marks et al. 97] Automatic generation of rendering results by varying input parameters and arranging them into 2D layout Image graph [Ma 99] A dynamic graph for representing the process of visual data exploration Visualization by analogy [Scheidegger et al. 07] Query-by-example in the context of an ensemble of visualizations
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Visualizing visualizations Visual data exploration Iterative and explorative process Contains a wealth of information: parameters, results, history, relationships among them The process itself can be stored, tracked, and analyzed Learn lessons and share experiences The process can be incorporated into a visualization system
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Image graphs A visual representation of data exploration process Represent the results as well as the process of data visualization
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Image graphs Edge editing: replace the color transfer function of node 3 with the color map of node 7
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Image graphs A forward propagation of the color transfer function
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Concluding remarks Scientific collaboration Intrinsically social interaction among collaborators From data/tool centric to user centric Enhance existing collaborative spaces with Social context Collective analysis Visualization plays a key role in Collaborative space management Knowledge discovery
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Acknowledgements DOE SciDAC program DEFC02-06ER25777 NSF CCF-0634913 OCI-0325934 CNS-0551727 Collaborators Zeqian Shen, Yue Wang, James Shearer @ UC Davis Greg Schussman @ SLAC Tina Eliassi-Rad @ LLNL
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