CYHCSep 29, 2021

Understanding Relations Between Perception of Fairness and Trust in Algorithmic Decision Making

arXiv:2109.14345v119 citations
AI Analysis

This addresses concerns about fairness and trust in AI for managerial decision-making, particularly in human resource recruitment, but is incremental in exploring perception relationships.

The study investigated how different levels of algorithmic fairness affect human perception of fairness and trust in algorithmic decision-making, finding positive correlations and greater sensitivity to higher fairness levels.

Algorithmic processes are increasingly employed to perform managerial decision making, especially after the tremendous success in Artificial Intelligence (AI). This paradigm shift is occurring because these sophisticated AI techniques are guaranteeing the optimality of performance metrics. However, this adoption is currently under scrutiny due to various concerns such as fairness, and how does the fairness of an AI algorithm affects user's trust is much legitimate to pursue. In this regard, we aim to understand the relationship between induced algorithmic fairness and its perception in humans. In particular, we are interested in whether these two are positively correlated and reflect substantive fairness. Furthermore, we also study how does induced algorithmic fairness affects user trust in algorithmic decision making. To understand this, we perform a user study to simulate candidate shortlisting by introduced (manipulating mathematical) fairness in a human resource recruitment setting. Our experimental results demonstrate that different levels of introduced fairness are positively related to human perception of fairness, and simultaneously it is also positively related to user trust in algorithmic decision making. Interestingly, we also found that users are more sensitive to the higher levels of introduced fairness than the lower levels of introduced fairness. Besides, we summarize the theoretical and practical implications of this research with a discussion on perception of fairness.

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