Improving Workplace Judgments by Reducing Noise: Lessons Learned from a Century of Selection Research

Scott Highhouse, Margaret E. Brooks
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引用次数: 5

Abstract

Some assert that noise (i.e., unwanted variance) is the most neglected yet most important source of error in judgment. We suggest that this problem was discovered nearly 100 years ago in the area of personnel selection and that a century of selection research has shown that noise can be demonstrably reduced by structuring the process (i.e., decomposing the component parts, agreeing on standards, and applying those standards consistently) and by aggregating judgments independently. Algorithms can aid significantly in this process but are often confused with methods that, in their current form, can substantially increase noise in judgment (e.g., artificial intelligence and machine learning).
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通过减少噪音改善工作场所的判断:从一个世纪的选择研究中吸取的教训
有些人断言,噪声(即不需要的方差)是判断中最容易被忽视但也是最重要的误差来源。我们认为,这个问题早在近100年前就在人员选择领域被发现了,一个世纪的选择研究表明,通过构建过程(即分解组成部分,商定标准,并一致地应用这些标准)和独立地汇总判断,可以明显地减少噪音。算法可以在这个过程中提供重要的帮助,但通常与当前形式的方法(例如人工智能和机器学习)相混淆,这些方法会大大增加判断中的噪音。
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来源期刊
CiteScore
24.20
自引率
2.20%
发文量
22
期刊介绍: Launched in March 2014, the Annual Review of Organizational Psychology and Organizational Behavior is a publication dedicated to reviewing the literature on I/O Psychology and HRM/OB. In the latest edition of the Journal Citation Report (JCR) in 2023, this journal achieved significant recognition. It ranked among the top 5 journals in two categories and boasted an impressive Impact Factor of 13.7.
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