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Identifying expertise through semantic modeling: A modified BBPSO algorithm for the reviewer assignment problem

机译:通过语义建模识别专业知识:用于评论员分配问题的修改BBPSO算法

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摘要

Reviewers play a significant role in academic peer review activities, including conference paper assignment and funding selection, because their evaluation of proposals impacts the final decision. Several studies have proposed reviewer selection strategies or reviewer evaluation methods for solving the problem of selecting appropriate reviewers. Identifying reviewers who are familiar with the proposals to be reviewed is the objective of the reviewer assignment problem. However, the majority of the existing studies ignore quantitative constraints with respect to the articles assigned to the reviewers during the review process. In this study, we propose a novel optimization model with several review condition constraints to address the reviewer assignment problem. In the proposed model, the expertise and research areas of the candidate reviewers and proposals are identified using semantic topic models, which are demonstrated to be effective when measuring the relevance of the reviewers with respect to the proposals to be reviewed; further, the computational efficiency is improved owing to the reduced representation dimensionality. Herein, an improved heuristic algorithm is proposed to match reviewers and papers based on specific topic areas, and candidate reviewers are assigned to each proposal under the global optimum condition based on their overall performance values. Subsequently, an empirical test is conducted using a conference reviewer dataset. The obtained results show that the proposed model can help the managers to efficiently and effectively select reviewers in terms of the convergence rate and convergence level when compared with several classic benchmarks. (C) 2020 Elsevier B.V. All rights reserved.
机译:审稿人在学术同行审查活动中发挥着重要作用,包括会议纸质分配和资金选择,因为他们对提案的评估会影响最终决定。若干研究已经提出了审查员选择策略或审阅者评估方法,以解决选择适当的审稿人员的问题。识别熟悉要审查提案的审阅人员是审稿人分配问题的目标。然而,大多数现有研究在审查过程中忽视了分配给审阅者的物品的量化限制。在这项研究中,我们提出了一种新颖的优化模型,具有几种审查条件约束来解决审阅者分配问题。在拟议的模型中,使用语义主题模型确定了候选审稿人和提案的专业知识和研究领域,这些模型被证明在衡量审阅者关于审查提案的相关建议时有效;此外,由于降低的表示维度,计算效率得到改善。在此,提出了一种改进的启发式算法来匹配基于特定主题领域的审阅者和论文,并且根据其整体性能值,在全局最佳条件下分配候选审核人员。随后,使用会议审阅者数据集进行实证测试。所获得的结果表明,与几个经典基准相比,该拟议的模型可以帮助管理人员有效,有效地选择审阅者,并在收敛速度和收敛水平方面选择审阅者。 (c)2020 Elsevier B.V.保留所有权利。

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