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Politeness Transfer: A Tag and Generate Approach

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arxiv 2004.14257 v2 pith:7CTRDID3 submitted 2020-04-29 cs.CL

Politeness Transfer: A Tag and Generate Approach

classification cs.CL
keywords transferpolitenessstyleaccuracycontentevaluationsgeneratemeaning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper introduces a new task of politeness transfer which involves converting non-polite sentences to polite sentences while preserving the meaning. We also provide a dataset of more than 1.39 instances automatically labeled for politeness to encourage benchmark evaluations on this new task. We design a tag and generate pipeline that identifies stylistic attributes and subsequently generates a sentence in the target style while preserving most of the source content. For politeness as well as five other transfer tasks, our model outperforms the state-of-the-art methods on automatic metrics for content preservation, with a comparable or better performance on style transfer accuracy. Additionally, our model surpasses existing methods on human evaluations for grammaticality, meaning preservation and transfer accuracy across all the six style transfer tasks. The data and code is located at https://github.com/tag-and-generate.

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