首页> 外文会议>2017 ACM/IEEE Joint Conference on Digital Libraries >Influence of Reviewer Interaction Network on Long-Term Citations: A Case Study of the Scientific Peer-Review System of the Journal of High Energy Physics
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Influence of Reviewer Interaction Network on Long-Term Citations: A Case Study of the Scientific Peer-Review System of the Journal of High Energy Physics

机译:审稿人互动网络对长期引用的影响:以《高能物理》杂志的同行审稿系统为例

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A `peer-review system' in the context of judging research contributions, is one of the prime steps undertaken to ensure the quality of the submissions received; a significant portion of the publishing budget is spent towards successful completion of the peer-review by the publication houses. Nevertheless, the scientific community is largely reaching a consensus that peer-review system, although indispensable, is nonetheless flawed. A very pertinent question therefore is “could this system be improved?”. In this paper, we attempt to present an answer to this question by considering a massive dataset of around 29k papers with roughly 70k distinct review reports together consisting of 12m lines of review text from the Journal of High Energy Physics (JHEP) between 1997 and 2015. In specific, we introduce a novel reviewer-reviewer interaction network (an edge exists between two reviewers if they were assigned by the same editor) and show that surprisingly the simple structural properties of this network such as degree, clustering coefficient, centrality (closeness, betweenness etc.) serve as strong predictors of the long-term citations (i.e., the overall scientific impact) of a submitted paper. These features, when plugged in a regression model, alone achieves a high R of 0.79 and a low RMSE of 0.496 in predicting the long-term citations. In addition, we also design a set of supporting features built from the basic characteristics of the submitted papers, the authors and the referees (e.g., the popularity of the submitting author, the acceptance rate history of a referee, the linguistic properties laden in the text of the review reports etc.), which further results in overall improvement with R of 0.81 and RMSE of 0.46. Analysis of feature importance shows that the network features constitute the best predictors for this task. Although we do not claim to provide a full-fledged reviewer recommendation system (that could potentially replace an editor), our method could be extremely useful in assisting the editors in deciding the acceptance or rejection of a paper, thereby, improving the effectiveness of the peer-review system.
机译:在评判研究论文的背景下,“同行评审系统”是确保收到的论文质量的主要步骤之一;出版预算的很大一部分用于出版社成功完成同行评审。尽管如此,科学界已在很大程度上达成共识,即同行评审制度虽然必不可少,但仍存在缺陷。因此,一个非常相关的问题是“是否可以改进该系统?”。在本文中,我们尝试通过考虑约29k篇论文的大规模数据集和约70k篇不同的评论报告来提出这个问题的答案,这些报告包括1997年至2015年间来自《高能物理学杂志》(JHEP)的1200万行评论文本具体来说,我们引入了一个新颖的审阅者-审阅者交互网络(如果两个审阅者由同一编辑者分配,则在他们之间存在优势),并令人惊讶地表明,该网络的简单结构性质,例如程度,聚类系数,中心性(紧密度) ,中间性等)可以很好地预测所提交论文的长期引用(即,总体科学影响)。当将这些功能插入回归模型时,在预测长期引用时,单独获得了0.79的高R和0.496的低RMSE。此外,我们还根据提交的论文,作者和裁判的基本特征(例如,提交作者的受欢迎程度,裁判的接受率历史记录,语言中的语言特性)设计了一套支持功能。审查报告等文本),进一步改善了整体效果,R值为0.81,RMSE值为0.46。对特征重要性的分析表明,网络特征是完成此任务的最佳预测器。尽管我们不主张提供完整的审稿人推荐系统(可以替代编辑),但我们的方法在协助编辑人员确定论文的接受或拒绝方面非常有用,从而提高了论文的有效性。同行评审系统。

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