4.7 Article

A proactive decision support system for reviewer recommendation in academia

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 169, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2020.114331

Keywords

Reviewer recommendation; Topic modeling; Clustering; Citation analysis; Random walk with restart (RWR)

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Peer review is crucial in ensuring publication quality and a healthy scientific evaluation process, but manually selecting appropriate reviewers is becoming increasingly tedious and challenging. This study proposes a multilayered approach integrating various networks into a reviewer Recommender System to address multiple factors in the real-world systems. Results show that the proposed system outperforms state-of-the-art techniques in terms of various standard metrics.
Peer review is an essential part of scientific communications to ensure the quality of publications and a healthy scientific evaluation process. Assigning appropriate reviewers poses a great challenge for program chairs and journal editors for many reasons, including relevance, fair judgment, no conflict of interest, and qualified reviewers in terms of scientific impact. With a steady increase in the number of research domains, scholarly venues, researchers, and papers in academia, manually selecting and accessing adequate reviewers is becoming a tedious and time-consuming task. Traditional approaches for reviewer selection mainly focus on the matching of research relevance by keywords or disciplines. However, in real-world systems, various factors are often needed to be considered. Therefore, we propose a multilayered approach integrating Topic Network, Citation Network, and Reviewer Network into a reviewer Recommender System (TCRRec). We explore various aspects, including relevance between reviewer candidates and submission, authority, expertise, diversity, and conflict of interest and integrate them into the proposed framework TCRRec. The paper also addresses cold start issues for researchers having unique areas of interest or for isolated researchers. Experiments based on the NIPS and AMiner dataset demonstrate that the proposed TCRRec outperforms state-of-the-art recommendation techniques in terms of standard metrics of precision@k, MRR, nDCG@k, authority, expertise, diversity, and coverage.

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