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Online Visual Analytics of Text Streams

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arxiv 1512.04042 v1 pith:OIQ5ZKFI submitted 2015-12-13 cs.IR cs.HC

Online Visual Analytics of Text Streams

classification cs.IR cs.HC
keywords topicstreecutstexttopicanalyticsapproachbeen
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present an online visual analytics approach to helping users explore and understand hierarchical topic evolution in high-volume text streams. The key idea behind this approach is to identify representative topics in incoming documents and align them with the existing representative topics that they immediately follow (in time). To this end, we learn a set of streaming tree cuts from topic trees based on user-selected focus nodes. A dynamic Bayesian network model has been developed to derive the tree cuts in the incoming topic trees to balance the fitness of each tree cut and the smoothness between adjacent tree cuts. By connecting the corresponding topics at different times, we are able to provide an overview of the evolving hierarchical topics. A sedimentation-based visualization has been designed to enable the interactive analysis of streaming text data from global patterns to local details. We evaluated our method on real-world datasets and the results are generally favorable.

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