Conference peer review constitutes a human-computation process whose importance cannot be overstated: not only it identifies the best submissions for acceptance, but, ultimately, it impacts the future of the whole research area by promoting some ideas and restraining others. A surge in the number of submissions received by leading AI conferences has challenged the sustainability of the review process by increasing the burden on the pool of qualified reviewers which is growing at a much slower rate. In this work, we consider the problem of reviewer recruiting with a focus on the scarcity of qualified reviewers in large conferences. Specifically, we design a procedure for (i) recruiting reviewers from the population not typically covered by major conferences and (ii) guiding them through the reviewing pipeline. In conjunction with ICML 2020 -- a large, top-tier machine learning conference -- we recruit a small set of reviewers through our procedure and compare their performance with the general population of ICML reviewers. Our experiment reveals that a combination of the recruiting and guiding mechanisms allows for a principled enhancement of the reviewer pool and results in reviews of superior quality compared to the conventional pool of reviews as evaluated by senior members of the program committee (meta-reviewers).
翻译:会议同侪审查是一个人的计算过程,其重要性怎么强调也不为过:它不仅确定供接受的最佳提交材料,而且最终通过推广某些想法和限制其他想法,对整个研究领域的未来产生影响。主要大赦国际会议收到的提交材料数量激增,增加了合格审查人员队伍的负担,使审查过程的可持续性受到挑战,而合格审查人员队伍的负担正在以缓慢得多的速度增长。在这项工作中,我们审议了征聘审查人员的问题,重点是大型会议中合格审查人员短缺的问题。具体地说,我们设计了一个程序,以便(一) 从通常不是主要会议涵盖的人口中征聘审查人员,并(二) 通过审查程序指导他们。与2020年ICML -- -- 一次大型、顶层机器学习会议 -- -- 一起,我们通过我们的程序征聘了一小部分审查人员,并将他们的业绩与考试和测验人员队伍的普通人口进行比较。我们的实验表明,将征聘和指导机制结合起来,就可以有原则地加强审查人员队伍,并产生优于方案委员会高级成员(元评审员)所评价的常规审查人才库的结果。