4.7 Article

ThemeDelta: Dynamic Segmentations over Temporal Topic Models

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TVCG.2014.2388208

Keywords

Language models; time-series segmentation; text analytics; visual representations

Funding

  1. Direct For Education and Human Resources
  2. Division Of Undergraduate Education [1444277] Funding Source: National Science Foundation
  3. Division Of Undergraduate Education
  4. Direct For Education and Human Resources [1123340, 1123108] Funding Source: National Science Foundation

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We present ThemeDelta, a visual analytics system for extracting and visualizing temporal trends, clustering, and reorganization in time-indexed textual datasets. ThemeDelta is supported by a dynamic temporal segmentation algorithm that integrates with topic modeling algorithms to identify change points where significant shifts in topics occur. This algorithm detects not only the clustering and associations of keywords in a time period, but also their convergence into topics (groups of keywords) that may later diverge into new groups. The visual representation of ThemeDelta uses sinuous, variable-width lines to show this evolution on a timeline, utilizing color for categories, and line width for keyword strength. We demonstrate how interaction with ThemeDelta helps capture the rise and fall of topics by analyzing archives of historical newspapers, of U.S. presidential campaign speeches, and of social messages collected through iNeighbors, a web-based social website. ThemeDelta is evaluated using a qualitative expert user study involving three researchers from rhetoric and history using the historical newspapers corpus.

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