Discrete Latent Variable Representations for Low-Resource Text Classification

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Authors Shuning Jin, Sam Wiseman, Karl Stratos, Karen Livescu arXiv ID 2006.06226 Category cs.CL: Computation & Language Citations 16 Venue Annual Meeting of the Association for Computational Linguistics Last Checked 3 months ago
Abstract
While much work on deep latent variable models of text uses continuous latent variables, discrete latent variables are interesting because they are more interpretable and typically more space efficient. We consider several approaches to learning discrete latent variable models for text in the case where exact marginalization over these variables is intractable. We compare the performance of the learned representations as features for low-resource document and sentence classification. Our best models outperform the previous best reported results with continuous representations in these low-resource settings, while learning significantly more compressed representations. Interestingly, we find that an amortized variant of Hard EM performs particularly well in the lowest-resource regimes.
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