Publication | Open Access
Comparative Exploration of Document Collections: a Visual Analytics Approach
32
Citations
32
References
2014
Year
EngineeringVisualization MethodComputational AnalysisTopic CoinsText MiningNatural Language ProcessingInteractive VisualizationComparative ExplorationInformation RetrievalData ScienceProbabilistic Topic ModelingDocument ClassificationLanguage StudiesContent AnalysisVisual AnalyticsDocument ClusteringKnowledge DiscoveryLinked Data VisualizationVector Space ModelTopic ModelContent RepresentationLinguistics
Abstract We present an analysis and visualization method for computing what distinguishes a given document collection from others. We determine topics that discriminate a subset of collections from the remaining ones by applying probabilistic topic modeling and subsequently approximating the two relevant criteria distinctiveness and characteristicness algorithmically through a set of heuristics. Furthermore, we suggest a novel visualization method called DiTop‐View, in which topics are represented by glyphs (topic coins) that are arranged on a 2D plane. Topic coins are designed to encode all information necessary for performing comparative analyses such as the class membership of a topic, its most probable terms and the discriminative relations. We evaluate our topic analysis using statistical measures and a small user experiment and present an expert case study with researchers from political sciences analyzing two real‐world datasets.
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