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Published in: Discover Computing 3/2021

02-04-2021

Improved reviewer assignment based on both word and semantic features

Authors: Shicheng Tan, Zhen Duan, Shu Zhao, Jie Chen, Yanping Zhang

Published in: Discover Computing | Issue 3/2021

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Abstract

Assigning appropriate reviewers to a manuscript from a pool of candidate reviewers is a common challenge in the academic community. Current word- and semantic-based approaches treat the reviewer assignment problem (RAP) as an information retrieval problem but do not take into account two constraints of the RAP: incompleteness of the reviewer data and interference from nonmanuscript-related papers. In this paper, a word and semantic-based iterative model (WSIM) is proposed to account for the constraints of the RAP by improving the similarity calculations between reviewers and manuscripts. First, we use the improved language model and topic model to extract word features and semantic features to represent reviewers and manuscripts. Second, we use a similarity metric based on the normalized discounted cumulative gain (NDCG) to measure semantic similarity. This metric ignores the probability value (quantitative exact value) of the topic and considers only the ranking (qualitative relevance), thus reducing overfitting to incomplete reviewer data. Finally, we use an iterative model to reduce the interference from nonmanuscript-related papers in the reviewer data. This approach considers the similarity between the manuscript and each of the reviewer’s papers. We evaluate the proposed WSIM on two real datasets and compare its performance to that of seven existing methods. The experimental results show that the WSIM improves the recommendation accuracy by at least 2.5% on the top 20.

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Metadata
Title
Improved reviewer assignment based on both word and semantic features
Authors
Shicheng Tan
Zhen Duan
Shu Zhao
Jie Chen
Yanping Zhang
Publication date
02-04-2021
Publisher
Springer Netherlands
Published in
Discover Computing / Issue 3/2021
Print ISSN: 2948-2984
Electronic ISSN: 2948-2992
DOI
https://doi.org/10.1007/s10791-021-09390-8

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