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Exploiting Heterogeneous Scientific Literature Networks to Combat Ranking Bias: Evidence From the Computational Linguistics Area

机译:利用异构科学文献网络来对抗排名偏差:来自计算语言学领域的证据

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摘要

It is important to help researchers find valuable papers from a large literature collection. To this end, many graph-based ranking algorithms have been proposed. However, most of these algorithms suffer from the problem of ranking bias. Ranking bias hurts the usefulness of a ranking algorithm because it returns a ranking list with an undesirable time distribution. This paper is a focused study on how to alleviate ranking bias by leveraging the heterogeneous network structure of the literature collection. We propose a new graph-based ranking algorithm, MutualRank, that integrates mutual reinforcement relationships among networks of papers, researchers, and venues to achieve a more synthetic, accurate, and less-biased ranking than previous methods. MutualRank provides a unified model that involves both intra-and inter-network information for ranking papers, researchers, and venues simultaneously. We use the ACL Anthology Network as the benchmark data set and construct the gold standard from computer linguistics course websites of well-known universities and two well-known textbooks. The experimental results show that MutualRank greatly outperforms the state-of-the-art competitors, including PageRank, HITS, CoRank, Future Rank, and P-Rank, in ranking papers in both improving ranking effectiveness and alleviating ranking bias. Rankings of researchers and venues by MutualRank are also quite reasonable.
机译:重要的是要帮助研究人员从大量文献中找到有价值的论文。为此,已经提出了许多基于图的排名算法。但是,大多数这些算法都存在排序偏差的问题。排名偏差会损害排名算法的实用性,因为它会返回具有不期望的时间分布的排名列表。本文是关于如何利用文献集合的异构网络结构来缓解排名偏差的重点研究。我们提出了一种新的基于图的排名算法MutualRank,该算法集成了论文,研究人员和场所网络之间的相互加强关系,以实现比以前的方法更加综合,准确和偏重的排名。 MutualRank提供了一个统一的模型,其中涉及网络内和网络间信息,可同时对论文,研究人员和场所进行排名。我们使用ACL Anthology网络作为基准数据集,并从著名大学的计算机语言课程网站和两本著名教科书中构建黄金标准。实验结果表明,MutualRank在改善排名效果和缓解排名偏见方面,在排名论文中均远胜过PageRank,HITS,CoRank,Future Rank和P-Rank等最先进的竞争对手。 MutualRank对研究人员和场所的排名也很合理。

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    School of Information Engineering, Zhejiang University of Technology, No. 288 Liuhe Road, Hangzhou, 310023, China;

    Key Lab of Intelligent Information Processing, Institute of Computing Technology, Chinese Academy of Sciences, No. 6 Kexueyuan South Road, Beijing, 100190, China;

    Department of Information Science and Electronic Engineering, Zhejiang University, No. 37 Zheda Road, Hangzhou, 310007, China;

    Key Laboratory of Intelligent Information Processing, Institute of Computing Technology, Chinese Academy of Sciences, No. 6 Kexueyuan South Road, Beijing 100190, China, and Aston University, B4 7ET, Birmingham, UK;

    School of Computer Science and Technology, Soochow University, No. 1 Shizi Road, Suzhou 215006, China;

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