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arxiv: 1705.09296 · v2 · pith:KRMHR5KJnew · submitted 2017-05-25 · 📊 stat.ML · cs.CL

Neural Models for Documents with Metadata

classification 📊 stat.ML cs.CL
keywords modelsmetadataexplorationframeworkinferenceneuralachievesadvances
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Most real-world document collections involve various types of metadata, such as author, source, and date, and yet the most commonly-used approaches to modeling text corpora ignore this information. While specialized models have been developed for particular applications, few are widely used in practice, as customization typically requires derivation of a custom inference algorithm. In this paper, we build on recent advances in variational inference methods and propose a general neural framework, based on topic models, to enable flexible incorporation of metadata and allow for rapid exploration of alternative models. Our approach achieves strong performance, with a manageable tradeoff between perplexity, coherence, and sparsity. Finally, we demonstrate the potential of our framework through an exploration of a corpus of articles about US immigration.

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