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ReAct: A Review Comment Dataset for Actionability

2022-10-02 07:09:38
Gautam Choudhary, Natwar Modani, Nitish Maurya

Abstract

Review comments play an important role in the evolution of documents. For a large document, the number of review comments may become large, making it difficult for the authors to quickly grasp what the comments are about. It is important to identify the nature of the comments to identify which comments require some action on the part of document authors, along with identifying the types of these comments. In this paper, we introduce an annotated review comment dataset ReAct. The review comments are sourced from OpenReview site. We crowd-source annotations for these reviews for actionability and type of comments. We analyze the properties of the dataset and validate the quality of annotations. We release the dataset (this https URL) to the research community as a major contribution. We also benchmark our data with standard baselines for classification tasks and analyze their performance.

Abstract (translated)

URL

https://arxiv.org/abs/2210.00443

PDF

https://arxiv.org/pdf/2210.00443.pdf


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