AI and humans bring complementary skills to group deliberations. Modeling this group decision making is especially challenging when the deliberations include an element of risk and an exploration-exploitation process of appraising the capabilities of the human and AI agents. To investigate this question, we presented a sequence of intellective issues to a set of human groups aided by imperfect AI agents. A group's goal was to appraise the relative expertise of the group's members and its available AI agents, evaluate the risks associated with different actions, and maximize the overall reward by reaching consensus. We propose and empirically validate models of human-AI team decision making under such uncertain circumstances, and show the value of socio-cognitive constructs of prospect theory, influence dynamics, and Bayesian learning in predicting the behavior of human-AI groups.
翻译:大赦国际和人类将互补技能带给小组审议。模拟这一群体决策尤其具有挑战性,因为审议包括了风险要素和评估人类和大赦国际代理人能力的探索-开发过程。为了调查这一问题,我们向一组由不完善的大赦国际代理人协助的人类团体提出了一系列具有积极意义的问题。一个团体的目标是评估该团体成员及其现有的大赦国际代理人的相对专门知识,评估与不同行动有关的风险,并通过达成共识最大限度地提高总体奖励。我们提出并用经验验证了在这种不确定情况下人类-大赦国际小组决策的模式,并展示了前景理论、影响动态和贝叶斯人学习在预测人类-大赦国际团体行为方面的价值。