We present TopicView, an application for visually comparing and exploring multiple models of text corpora. TopicView uses multiple linked views to visually analyze both the conceptual content and the document relationships in models generated using different algorithms. To illustrate TopicView, we apply it to models created using two standard approaches: Latent Semantic Analysis (LSA) and Latent Dirichlet Allocation (LDA). Conceptual content is compared through the combination of (i) a bipartite graph matching LSA concepts with LDA topics based on the cosine similarities of model factors and (ii) a table containing the terms for each LSA concept and LDA topic listed in decreasing order of importance. Document relationships are examined through the combination of (i) side-by-side document similarity graphs, (ii) a table listing the weights for each document's contribution to each concept/topic, and (iii) a full text reader for documents selected in either of the graphs or the table. We demonstrate the utility of TopicView's visual approach to model assessment by comparing LSA and LDA models of two example corpora.
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