Many scientific conferences employ a two-phase paper review process, where some papers are assigned additional reviewers after the initial reviews are submitted. Many conferences also design and run experiments on their paper review process, where some papers are assigned reviewers who provide reviews under an experimental condition. In this paper, we consider the question: how should reviewers be divided between phases or conditions in order to maximize total assignment similarity? We make several contributions towards answering this question. First, we prove that when the set of papers requiring additional review is unknown, a simplified variant of this problem is NP-hard. Second, we empirically show that across several datasets pertaining to real conference data, dividing reviewers between phases/conditions uniformly at random allows an assignment that is nearly as good as the oracle optimal assignment. This uniformly random choice is practical for both the two-phase and conference experiment design settings. Third, we provide explanations of this phenomenon by providing theoretical bounds on the suboptimality of this random strategy under certain natural conditions. From these easily-interpretable conditions, we provide actionable insights to conference program chairs about whether a random reviewer split is suitable for their conference.
翻译:许多科学会议采用两阶段文件审查进程,在初步审查提交后,有些文件被分配为额外的审查者。许多会议还设计和试验其文件审查进程,有些文件被指派为在试验条件下提供审查的审查者。在本文件中,我们审议了一个问题:审查者应如何在两个阶段或条件之间进行划分,以便最大限度地实现分配的完全相似性?我们为回答这个问题作出了若干贡献。首先,我们证明,当需要额外审查的一组文件未知时,这一问题的简化变式是硬的。第二,我们从经验上表明,在与实际会议数据有关的几个数据集中,将审查者在阶段/条件之间任意地区分开来,这样可以让一个几乎与最理想的任务一样好的指派工作成为单一的审查者/条件。这种统一的随机选择对于两个阶段和会议试验设计环境都是实际可行的。第三,我们通过在某些自然条件下就这种随机战略的亚优性提供理论界限来解释这种现象。从这些容易解释的条件中,我们向会议方案主席提供可操作的见解,说明随机审查者是否适合他们的会议。