Style-transfer and Paraphrase: Looking for a Sensible Semantic Similarity Metric

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Abstract

The rapid development of such natural language processing tasks as style transfer, paraphrase, and machine translation often calls for the use of semantic similarity metrics. In recent years a lot of methods to measure the semantic similarity of two short texts were developed. This paper provides a comprehensive analysis for more than a dozen of such methods. Using a new dataset of fourteen thousand sentence pairs human-labeled according to their semantic similarity, we demonstrate that none of the metrics widely used in the literature is close enough to human judgment in these tasks. A number of recently proposed metrics provide comparable results, yet Word Mover Distance is shown to be the most reasonable solution to measure semantic similarity in reformulated texts at the moment.

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Yamshchikov, I. P., Shibaev, V., Khlebnikov, N., & Tikhonov, A. (2021). Style-transfer and Paraphrase: Looking for a Sensible Semantic Similarity Metric. In 35th AAAI Conference on Artificial Intelligence, AAAI 2021 (Vol. 16, pp. 14213–14220). Association for the Advancement of Artificial Intelligence. https://doi.org/10.1609/aaai.v35i16.17672

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