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      Top-Rank Enhanced Listwise Optimization for Statistical Machine Translation

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          Abstract

          Pairwise ranking methods are the basis of many widely used discriminative training approaches for structure prediction problems in natural language processing(NLP). Decomposing the problem of ranking hypotheses into pairwise comparisons enables simple and efficient solutions. However, neglecting the global ordering of the hypothesis list may hinder learning. We propose a listwise learning framework for structure prediction problems such as machine translation. Our framework directly models the entire translation list's ordering to learn parameters which may better fit the given listwise samples. Furthermore, we propose top-rank enhanced loss functions, which are more sensitive to ranking errors at higher positions. Experiments on a large-scale Chinese-English translation task show that both our listwise learning framework and top-rank enhanced listwise losses lead to significant improvements in translation quality.

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          Learning to rank using gradient descent

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            Learning to rank

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              An empirical study of smoothing techniques for language modeling

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                Author and article information

                Journal
                17 July 2017
                Article
                1707.05438
                12b77822-807f-4e7c-a2b4-b8ea74d80b97

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Accepted to CONLL 2017
                cs.CL

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