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Discrete Autoencoders for Sequence Models

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arxiv 1801.09797 v1 pith:5XTGLNMH submitted 2018-01-29 cs.LG stat.ML

Discrete Autoencoders for Sequence Models

classification cs.LG stat.ML
keywords modelsdiscretelanguagesequencecurrentlatentmodelrepresentation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recurrent models for sequences have been recently successful at many tasks, especially for language modeling and machine translation. Nevertheless, it remains challenging to extract good representations from these models. For instance, even though language has a clear hierarchical structure going from characters through words to sentences, it is not apparent in current language models. We propose to improve the representation in sequence models by augmenting current approaches with an autoencoder that is forced to compress the sequence through an intermediate discrete latent space. In order to propagate gradients though this discrete representation we introduce an improved semantic hashing technique. We show that this technique performs well on a newly proposed quantitative efficiency measure. We also analyze latent codes produced by the model showing how they correspond to words and phrases. Finally, we present an application of the autoencoder-augmented model to generating diverse translations.

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