Initial investigation into computer scoring of candidate essays for personnel selection.

选择(遗传算法) 心理信息 困境 通知 杠杆(统计) 数据科学 心理学 预测效度 背景(考古学) 比例(比率) 人员选择 劣势 计算机科学 人工智能 社会心理学 应用心理学 梅德林 管理 临床心理学 政治学 法学 经济 古生物学 哲学 物理 认识论 生物 量子力学
作者
Michael C. Campion,Michael A. Campion,Emily D. Campion,Matthew H. Reider
出处
期刊:Journal of Applied Psychology [American Psychological Association]
卷期号:101 (7): 958-975 被引量:120
标识
DOI:10.1037/apl0000108
摘要

[Correction Notice: An Erratum for this article was reported in Vol 101(7) of Journal of Applied Psychology (see record 2016-32115-001). In the article the affiliations for Emily D. Campion and Matthew H. Reider were originally incorrect. All versions of this article have been corrected.] Emerging advancements including the exponentially growing availability of computer-collected data and increasingly sophisticated statistical software have led to a "Big Data Movement" wherein organizations have begun attempting to use large-scale data analysis to improve their effectiveness. Yet, little is known regarding how organizations can leverage these advancements to develop more effective personnel selection procedures, especially when the data are unstructured (text-based). Drawing on literature on natural language processing, we critically examine the possibility of leveraging advances in text mining and predictive modeling computer software programs as a surrogate for human raters in a selection context. We explain how to "train" a computer program to emulate a human rater when scoring accomplishment records. We then examine the reliability of the computer's scores, provide preliminary evidence of their construct validity, demonstrate that this practice does not produce scores that disadvantage minority groups, illustrate the positive financial impact of adopting this practice in an organization (N ∼ 46,000 candidates), and discuss implementation issues. Finally, we discuss the potential implications of using computer scoring to address the adverse impact-validity dilemma. We suggest that it may provide a cost-effective means of using predictors that have comparable validity but have previously been too expensive for large-scale screening. (PsycINFO Database Record
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