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ABSent: Cross-Lingual Sentence Representation Mapping with Bidirectional GANs

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arxiv 2001.11121 v1 pith:P6W5FNS3 submitted 2020-01-29 cs.CL cs.LG

ABSent: Cross-Lingual Sentence Representation Mapping with Bidirectional GANs

classification cs.CL cs.LG
keywords cross-lingualsentencemappingparallelabsentdatarepresentationsadditionally
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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A number of cross-lingual transfer learning approaches based on neural networks have been proposed for the case when large amounts of parallel text are at our disposal. However, in many real-world settings, the size of parallel annotated training data is restricted. Additionally, prior cross-lingual mapping research has mainly focused on the word level. This raises the question of whether such techniques can also be applied to effortlessly obtain cross-lingually aligned sentence representations. To this end, we propose an Adversarial Bi-directional Sentence Embedding Mapping (ABSent) framework, which learns mappings of cross-lingual sentence representations from limited quantities of parallel data.

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