Peer review is the backbone of academia and humans constitute a cornerstone of this process, being responsible for reviewing papers and making the final acceptance/rejection decisions. Given that human decision making is known to be susceptible to various cognitive biases, it is important to understand which (if any) biases are present in the peer-review process and design the pipeline such that the impact of these biases is minimized. In this work, we focus on the dynamics of between-reviewers discussions and investigate the presence of herding behaviour therein. In that, we aim to understand whether reviewers and more senior decision makers get disproportionately influenced by the first argument presented in the discussion when (in case of reviewers) they form an independent opinion about the paper before discussing it with others. Specifically, in conjunction with the review process of ICML 2020 -- a large, top tier machine learning conference -- we design and execute a randomized controlled trial with the goal of testing for the conditional causal effect of the discussion initiator's opinion on the outcome of a paper.
翻译:同行审议是学术界和人类的支柱,是这一进程的基石,负责审查文件和作出最后接受/拒绝决定。鉴于已知人类决策易受各种认知偏见的影响,重要的是要了解同行审议过程中存在哪些(如果有)偏见,并设计管道以尽量减少这些偏见的影响。在这项工作中,我们侧重于审查者之间讨论的动态,并调查其中存在放牧行为。在这方面,我们力求了解(如果是审查者)在与其他人讨论之前对该文件形成独立意见时,审查者和更高级决策者是否会受到讨论中提出的第一种论点的过度影响。具体地说,与2020年ICML的审查进程 -- -- 一个大型、顶级机器学习会议 -- -- 一起,我们设计和实施一个随机控制的试验,目的是测试讨论发起人关于文件结果的意见的有条件因果关系。