提名
公司治理
样品(材料)
过程(计算)
会计
业务
人工智能
机器学习
计算机科学
财务
化学
色谱法
操作系统
作者
Isil Erel,Léa H. Stern,Chenhao Tan,Michael S. Weisbach
摘要
Abstract Can algorithms assist firms in their decisions on nominating corporate directors? Directors predicted by algorithms to perform poorly indeed do perform poorly compared to a realistic pool of candidates in out-of-sample tests. Predictably bad directors are more likely to be male, accumulate more directorships, and have larger networks than the directors the algorithm would recommend in their place. Companies with weaker governance structures are more likely to nominate them. Our results suggest that machine learning holds promise for understanding the process by which governance structures are chosen and has potential to help real-world firms improve their governance.
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