ConRPG: Paraphrase Generation using Contexts as Regularizer
Yuxian Meng, Xiang Ao, Qing He, Xiaofei Sun, Qinghong Han, Fei Wu,, Chun fan, Jiwei Li

TL;DR
This paper introduces an unsupervised paraphrase generation method that leverages context as a regularizer, enabling high-quality, controllable paraphrase pair generation without relying on labeled data.
Contribution
It proposes a novel unsupervised framework using context-based regularization and human-interpretable scoring functions for improved paraphrase generation.
Findings
Effective in both supervised and unsupervised settings
Generates high-quality paraphrase pairs at scale
Allows human intervention for data quality control
Abstract
A long-standing issue with paraphrase generation is how to obtain reliable supervision signals. In this paper, we propose an unsupervised paradigm for paraphrase generation based on the assumption that the probabilities of generating two sentences with the same meaning given the same context should be the same. Inspired by this fundamental idea, we propose a pipelined system which consists of paraphrase candidate generation based on contextual language models, candidate filtering using scoring functions, and paraphrase model training based on the selected candidates. The proposed paradigm offers merits over existing paraphrase generation methods: (1) using the context regularizer on meanings, the model is able to generate massive amounts of high-quality paraphrase pairs; and (2) using human-interpretable scoring functions to select paraphrase pairs from candidates, the proposed…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Multimodal Machine Learning Applications
