算法厌恶:来自网约车司机的证据

Algorithm Aversion: Evidence from Ridesharing Drivers

Management Science · 2023
被引 27
人大 A+FT50UTD24ABS 4*

中文导读

通过网约车平台的大规模实地实验,发现司机因过往经验与算法建议不符、以及同伴行为与算法相悖而产生算法厌恶,揭示了影响算法采纳的关键因素。

Abstract

The low rate of adoption by human users often hinders AI algorithms from achieving their intended efficiency gains. This is particularly true for algorithms that prioritize system-wide objectives because they can create misalignment of incentives and cause confusion among potential users. We provide one of the first large-scale field studies on algorithm aversion by leveraging an algorithmic recommendation rollout on a large ridesharing platform. We identify contextual experience and herding as two important factors that explain ridesharing drivers’ aversion to an algorithm that is designed to help drivers make better location choices. Specifically, we find that drivers are less likely to follow the algorithm when the algorithmic recommendation does not align with their past experience at a given location-time unit and when their peers’ actions contradict the algorithmic recommendations. We discuss the managerial implications of these findings. This paper was accepted by Catherine Tucker, Special Issue on the Human-Algorithm Connection. Funding: The research at Shanghai Jiaotong University was supported by the National Natural Science Foundation of China [Grants 72202135, 72110107001, 72231003]. S. Zhang acknowledges the support of Shanghai Pujiang Program [Grant 21PJC070], and Special Fund for Creative Research Groups [Grant 72221001]. Y. Zhu acknowledges the support of National University of Singapore [Grant WBS A-8000489-00-00]. Supplemental Material: The online appendix and data are available at https://doi.org/10.1287/mnsc.2022.02475 .

算法厌恶网约车司机经验偏差从众行为