Algorithms are used to aid human decision makers by making predictions and recommending decisions. Currently, these algorithms are trained to optimize prediction accuracy. What if they were optimized to control final decisions? In this paper, we study a decision-aid algorithm that learns about the human decision maker and provides ''personalized recommendations'' to influence final decisions. We first consider fixed human decision functions which map observable features and the algorithm's recommendations to final decisions. We characterize the conditions under which perfect control over final decisions is attainable. Under fairly general assumptions, the parameters of the human decision function can be identified from past interactions between the algorithm and the human decision maker, even when the algorithm was constrained to make truthful recommendations. We then consider a decision maker who is aware of the algorithm's manipulation and responds strategically. By posing the setting as a variation of the cheap talk game [Crawford and Sobel, 1982], we show that all equilibria are partition equilibria where only coarse information is shared: the algorithm recommends an interval containing the ideal decision. We discuss the potential applications of such algorithms and their social implications.
翻译:算法通过预测和推荐决策来辅助人类决策者。当前的算法是为了优化预测准确性而训练的。如果它们被优化为控制最终决策,那会怎样呢?在本文中,我们研究了一种决策辅助算法,该算法学习人类决策者并提供“个性化建议”以影响最终决策。首先,我们考虑将可观察特征和算法建议映射到最终决策的固定人类决策函数。我们确定了可以达到完全控制最终决策的条件。在相当普遍的假设下,即使算法被限制进行真实建议,也可以从算法和人类决策者之间的过去交互中识别出人类决策函数的参数。然后,我们考虑了一个决策者,他知道算法的操纵并进行战略性回应。通过将设置置为“cheap talk game”[Crawford and Sobel, 1982]的变体,我们表明所有的均衡都是分区均衡,只有粗略的信息被共享:算法建议包含理想决策的区间。我们讨论了这些算法的潜在应用和社会影响。