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Argument Mining for Understanding Peer Reviews - 2019

Argument Mining For Understanding Peer Reviews

Survey Paper on Argument Mining For Understanding Peer Reviews

Research Area:  Machine Learning

Abstract:

Peer-review plays a critical role in the scientific writing and publication ecosystem. To assess the efficiency and efficacy of the reviewing process, one essential element is to understand and evaluate the reviews themselves. In this work, we study the content and structure of peer reviews under the argument mining framework, through automatically detecting (1) argumentative propositions put forward by reviewers, and (2) their types (e.g., evaluating the work or making suggestions for improvement). We first collect 14.2K reviews from major machine learning and natural language processing venues. 400 reviews are annotated with 10,386 propositions and corresponding types of Evaluation, Request, Fact, Reference, or Quote. We then train state-of-the-art proposition segmentation and classification models on the data to evaluate their utilities and identify new challenges for this new domain, motivating future directions for argument mining. Further experiments show that proposition usage varies across venues in amount, type, and topic.

Keywords:  
Argument Mining
Machine Learning
Deep Learning

Author(s) Name:  Xinyu Hua, Mitko Nikolov, Nikhil Badugu, Lu Wang

Journal name:  Computer Science

Conferrence name:  

Publisher name:  arXiv:1903.10104

DOI:  10.48550/arXiv.1903.10104

Volume Information: