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Sentence Bottleneck Autoencoders from Transformer Language Models ...
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Grounded Compositional Outputs for Adaptive Language Modeling ...
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Regularization Advantages of Multilingual Neural Language Models for Low Resource Domains ...
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STACKED NEURAL NETWORKS WITH PARAMETER SHARING FOR MULTILINGUAL LANGUAGE MODELING
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In: http://infoscience.epfl.ch/record/272000 (2019)
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GILE: A Generalized Input-Label Embedding for Text Classification
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In: Transactions of the Association for Computational Linguistics, Vol 7, Pp 139-155 (2019) (2019)
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Integrating Weakly Supervised Word Sense Disambiguation into Neural Machine Translation ...
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Integrating Weakly Supervised Word Sense Disambiguation into Neural Machine Translation ...
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Integrating Weakly Supervised Word Sense Disambiguation into Neural Machine Translation ...
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Multilingual Hierarchical Attention Networks for Document Classification ...
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Multilingual Hierarchical Attention Networks for Document Classification ...
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Multilingual Hierarchical Attention Networks for Document Classification ...
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Self-Attentive Residual Decoder for Neural Machine Translation ...
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Sense-Aware Statistical Machine Translation using Adaptive Context-Dependent Clustering ...
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Abstract:
Statistical machine translation (SMT) systems use local cues from n-gram translation and language models to select the translation of each source word. Such systems do not explicitly perform word sense disambiguation (WSD), although this would enable them to select translations depending on the hypothesized sense of each word. Previous attempts to constrain word translations based on the results of generic WSD systems have suffered from their limited accuracy. We demonstrate that WSD systems can be adapted to help SMT, thanks to three key achievements: (1)~we consider a larger context for WSD than SMT can afford to consider; (2)~we adapt the number of senses per word to the ones observed in the training data using clustering-based WSD with K-means; and (3)~we initialize sense-clustering with definitions or examples extracted from WordNet. Our WSD system is competitive, and in combination with a factored SMT system improves noun and verb translation from English to Chinese, Dutch, French, German, and Spanish. ...
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URL: https://zenodo.org/record/834304 https://dx.doi.org/10.5281/zenodo.834304
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Sense-Aware Statistical Machine Translation using Adaptive Context-Dependent Clustering ...
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Multilingual Hierarchical Attention Networks for Document Classification
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In: http://infoscience.epfl.ch/record/231134 (2017)
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Cross-lingual Transfer for News Article Labeling: Benchmarking Statistical and Neural Models
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In: http://infoscience.epfl.ch/record/231130 (2017)
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Evaluating Attention Networks for Anaphora Resolution
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In: http://infoscience.epfl.ch/record/231846 (2017)
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