Relative Effects of Positive and Negative Explanations on Satisfaction and Performance in Human-Agent Teams

Bryan Lavender, Sami Abuhaimed, S. Sen
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Abstract

Improving agent capabilities and increasing availability of computing platforms and Internet connectivity allows for more effective and diverse collaboration between human users and automated agents. To increase the viability and effectiveness of human-agent collaborative teams, there is a pressing need for research enabling such teams to maximally leverage relative strengths of human and automated reasoners. We study virtual and ad-hoc teams, comprising a human and an agent, collaborating over a few episodes where each episode requires them to complete a set of tasks chosen from given task types. Team members are initially unaware of the capabilities of their partners, and the agent, acting as the task allocator, has to adapt the allocation process to maximize team performance. The focus of the current paper is on analyzing how allocation decision explanations can affect both user performance and the human workers' outlook including factors such as motivation and satisfaction. We investigate the effect of explanations provided by the agent allocator to the human on performance and key factors reported by the human teammate on surveys. Survey factors include the effect of explanations on motivation, explanatory power, and understandability, as well as satisfaction with and trust / confidence in the teammate. We evaluated a set of hypotheses on these factors related to positive, negative, and no-explanation scenarios through experiments conducted with MTurk workers.
积极和消极解释对人- agent团队满意度和绩效的相对影响
改进代理功能并增加计算平台和Internet连接的可用性,可以在人类用户和自动代理之间实现更有效、更多样化的协作。为了提高人类代理协作团队的生存能力和有效性,迫切需要进行研究,使这样的团队能够最大限度地利用人类和自动推理器的相对优势。我们研究了虚拟和临时团队,包括一个人和一个代理,在几个情节中合作,每个情节要求他们完成从给定任务类型中选择的一组任务。团队成员最初并不知道其合作伙伴的能力,代理作为任务分配器,必须调整分配过程以最大化团队绩效。本文的重点是分析分配决策解释如何影响用户绩效和人类工人的前景,包括动机和满意度等因素。我们研究了代理分配器向人类提供的解释对绩效的影响,以及人类队友在调查中报告的关键因素。调查因素包括解释对动机、解释力和可理解性的影响,以及对队友的满意度和信任/信心。通过与MTurk工人进行的实验,我们评估了一系列与这些因素相关的假设,包括积极的、消极的和无法解释的场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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