论文标题
通过自然语言处理和机器学习增强了分布式同行评审
Distributed peer review enhanced with natural language processing and machine learning
论文作者
论文摘要
虽然古代科学家经常有顾客来资助他们的工作,但对资源分配建议的同行审查是现代科学的基础。一种非常普遍的方法是,提案是由由赠款机构提名的一小部分专家小组(由于物流和资金限制)评估。专家小组流程引入了几个问题 - 最著名的是:1)在选择小组中引入的偏见。 2)专家必须阅读大量的建议。分布式同行评审承诺通过在提议者之间分发审查任务来减轻一些描述的问题。每个建议者都有有限数量的审查和排名的建议。我们介绍了一项运行机器学习增强的分布式同伴审查过程的实验的结果,以分配欧洲南部观测员的望远镜时间。在这项工作中,我们表明分布式同行评审在统计上与“传统”面板相同,我们的机器学习算法可以预测成功率高的审阅者的专业知识,并且我们发现资历和审稿人的专业知识对审阅质量有影响。从参与社区(使用匿名反馈机制)赞扬了总体经验。
While ancient scientists often had patrons to fund their work, peer review of proposals for the allocation of resources is a foundation of modern science. A very common method is that proposals are evaluated by a small panel of experts (due to logistics and funding limitations) nominated by the grant-giving institutions. The expert panel process introduces several issues - most notably: 1) biases introduced in the selection of the panel. 2) experts have to read a very large number of proposals. Distributed Peer Review promises to alleviate several of the described problems by distributing the task of reviewing among the proposers. Each proposer is given a limited number of proposals to review and rank. We present the result of an experiment running a machine-learning enhanced distributed peer review process for allocation of telescope time at the European Southern Observatory. In this work, we show that the distributed peer review is statistically the same as a `traditional' panel, that our machine learning algorithm can predict expertise of reviewers with a high success rate, and we find that seniority and reviewer expertise have an influence on review quality. The general experience has been overwhelmingly praised from the participating community (using an anonymous feedback mechanism).