首页> 外文期刊>Autonomous agents and multi-agent systems >Strategic advice provision in repeated human-agent interactions
【24h】

Strategic advice provision in repeated human-agent interactions

机译:在反复的人与人互动中提供战略建议

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

This paper addresses the problem of automated advice provision in scenarios that involve repeated interactions between people and computer agents. This problem arises in many applications such as route selection systems, office assistants and climate control systems. To succeed in such settings agents must reason about how their advice influences people's future actions or decisions over time. This work models such scenarios as a family of repeated bilateral interaction called "choice selection processes", in which humans or computer agents may share certain goals, but are essentially self-interested. We propose a social agent for advice provision (SAP) for such environments that generates advice using a social utility function which weighs the sum of the individual utilities of both agent and human participants. The SAP agent models human choice selection using hyperbolic discounting and samples the model to infer the best weights for its social utility function. We demonstrate the effectiveness of SAP in two separate domains which vary in the complexity of modeling human behavior as well as the information that is available to people when they need to decide whether to accept the agent's advice. In both of these domains, we evaluated SAP in extensive empirical studies involving hundreds of human subjects. SAP was compared to agents using alternative models of choice selection processes informed by behavioral economics and psychological models of decision-making. Our results show that in both domains, the SAP agent was able to outperform alternative models. This work demonstrates the efficacy of combining computational methods with behavioral economics to model how people reason about machine-generated advice and presents a general methodology for agent-design in such repeated advice settings.
机译:本文解决了涉及人与计算机代理之间反复交互的情况下自动建议提供的问题。在诸如路线选择系统,办公室助理和气候控制系统的许多应用中会出现此问题。为了在这样的环境中取得成功,代理商必须思考他们的建议如何随着时间的推移影响人们未来的行动或决定。这项工作将诸如“一连串的双向互动”(称为“选择过程”)之类的场景建模,其中人类或计算机代理可以共享某些目标,但本质上是自私的。我们为此类环境提出了一种用于建议提供的社会代理(SAP),该代理使用社交效用函数生成建议,该函数权衡代理和人类参与者各自的效用之和。 SAP代理使用双曲线折扣对人类选择进行建模,并对模型进行抽样以推断出其社会效用函数的最佳权重。我们展示了SAP在两个独立领域中的有效性,这两个领域在建模人类行为的复杂性以及人们在需要决定是否接受代理的建议时可用的信息方面都各不相同。在这两个领域中,我们在涉及数百名人类受试者的广泛经验研究中评估了SAP。使用行为经济学和决策心理模型提供的选择选择过程的替代模型,将SAP与代理商进行了比较。我们的结果表明,在两个域中,SAP代理都能胜过其他模型。这项工作证明了将计算方法与行为经济学相结合以模拟人们如何推理机器生成的建议的有效性,并提出了在这种重复建议设置中进行代理设计的一般方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号