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Faculté et Recherche

Getting from Valid to Useful: End User Modifiability and Human Capital Analytics Implementation in Selection

16 fév
2023
11H45 - 13H15
Jouy-en-Josas
Anglais

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2023-02-16T11:45:00 2023-02-16T13:15:00 Getting from Valid to Useful: End User Modifiability and Human Capital Analytics Implementation in Selection Research Seminar Management & Human Resources Speaker: Patrick Downes KU Business School, The University of Kansas Bernard Ramanantsoa room Jouy-en-Josas

Research Seminar

Management & Human Resources

Speaker: Patrick Downes

KU Business School, The University of Kansas

Bernard Ramanantsoa room

Abstract

A major problem in employee selection coalesces around convincing decision makers (e.g., hiring managers) to use analytically derived models. Existing recommendations in the literature largely focus on convincing executives to adopt analytical models and then exert their top-down influence on lower-level hiring decisions. In contrast to these solutions, we explore end user modifiability (i.e., allowing decision makers to modify a statistical model before use) as a bottom-up approach for increasing hiring managers’ implementation of analytical recommendations. From a utility standpoint, we consider how incorporating end user modifiability into hiring decisions will result in a less statistically valid, but potentially more valuable, organizational selection process. We explore these ideas in two studies. In Study 1, we experimentally test whether model modification increases decision-maker reliance on a statistical model, as well as how much decision-makers need to modify a model in order to use it. In Study 2, we examine the extent that modifiability introduces implicit biases that might adversely affect marginalized groups. Results suggest that modifiability can increase decision-makers’ perceived usefulness of a model and, importantly, that only a small amount of modifiability is needed to elicit this effect. Further, end user modifications were statistically insignificant predictors of hiring rates across race-based subgroups, though supplementary analyses suggest important cautionary nuance. Given that analytical models are rarely perfectly or wholly implemented, end user modifiability may offer a viable solution for organizations seeking to increase the implementation of algorithmic guidance in selection decisions, even if it deviates modestly from a statistical optimality. 

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Ajouter au calendrier
2023-02-16T11:45:00 2023-02-16T13:15:00 Getting from Valid to Useful: End User Modifiability and Human Capital Analytics Implementation in Selection Research Seminar Management & Human Resources Speaker: Patrick Downes KU Business School, The University of Kansas Bernard Ramanantsoa room Jouy-en-Josas