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Paraphrase Identification with Deep Learning: A Review of Datasets and Methods

2022-12-13 23:06:20
Chao Zhou (Department of Computer Science, Syracuse University), Cheng Qiu (School of Arts and Science, Vanderbilt University), Daniel E. Acuna (Department of Computer Science, University of Colorado at Boulder)

Abstract

The rapid advancement of AI technology has made text generation tools like GPT-3 and ChatGPT increasingly accessible, scalable, and effective. This can pose serious threat to the credibility of various forms of media if these technologies are used for plagiarism, including scientific literature and news sources. Despite the development of automated methods for paraphrase identification, detecting this type of plagiarism remains a challenge due to the disparate nature of the datasets on which these methods are trained. In this study, we review traditional and current approaches to paraphrase identification and propose a refined typology of paraphrases. We also investigate how this typology is represented in popular datasets and how under-representation of certain types of paraphrases impacts detection capabilities. Finally, we outline new directions for future research and datasets in the pursuit of more effective paraphrase detection using AI.

Abstract (translated)

URL

https://arxiv.org/abs/2212.06933

PDF

https://arxiv.org/pdf/2212.06933.pdf


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