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Data Augmentation for Neural Online Chat Response Selection

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arxiv 1809.00428 v1 pith:AI3ROOBY submitted 2018-09-03 cs.CL

Data Augmentation for Neural Online Chat Response Selection

classification cs.CL
keywords dataaugmentationmodelsneuralresponseselectionabilityapproach
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Data augmentation seeks to manipulate the available data for training to improve the generalization ability of models. We investigate two data augmentation proxies, permutation and flipping, for neural dialog response selection task on various models over multiple datasets, including both Chinese and English languages. Different from standard data augmentation techniques, our method combines the original and synthesized data for prediction. Empirical results show that our approach can gain 1 to 3 recall-at-1 points over baseline models in both full-scale and small-scale settings.

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