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TIST 2018

Interactive Visual Graph Mining and Learning

Journal Article journal-article Artificial Intelligence ยท Intelligent Systems

Abstract

This article presents a platform for interactive graph mining and relational machine learning called GraphVis. The platform combines interactive visual representations with state-of-the-art graph mining and relational machine learning techniques to aid in revealing important insights quickly as well as learning an appropriate and highly predictive model for a particular task (e.g., classification, link prediction, discovering the roles of nodes, and finding influential nodes). Visual representations and interaction techniques and tools are developed for simple, fast, and intuitive real-time interactive exploration, mining, and modeling of graph data. In particular, we propose techniques for interactive relational learning (e.g., node/link classification), interactive link prediction and weighting, role discovery and community detection, higher-order network analysis (via graphlets, network motifs), among others. GraphVis also allows for the refinement and tuning of graph mining and relational learning methods for specific application domains and constraints via an end-to-end interactive visual analytic pipeline that learns, infers, and provides rapid interactive visualization with immediate feedback at each change/prediction in real-time. Other key aspects include interactive filtering, querying, ranking, manipulating, exporting, as well as tools for dynamic network analysis and visualization, interactive graph generators (including new block model approaches), and a variety of multi-level network analysis techniques.

Authors

Keywords

  • Statistical relational learning
  • direct manipulation
  • higher-order network analysis
  • interactive graph generation
  • interactive graph learning
  • interactive network visualization
  • interactive relational machine learning
  • interactive role discovery
  • interactive visual graph mining
  • link prediction
  • network analysis
  • node embeddings
  • rapid visual feedback
  • real-time performance
  • visual graph analytics

Context

Venue
ACM Transactions on Intelligent Systems and Technology
Archive span
2010-2026
Indexed papers
1415
Paper id
559670779967008372