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Aiding Human Reliance Decision Making Using Computational Models of Trust

机译:利用信任计算模型实现人力信赖决策

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This paper involves a human-agent system in which there is an operator charged with a pattern recognition task, using an automated decision aid. The objective is to make this human-agent system operate as effectively as possible. Effectiveness is gained by an increase of appropriate reliance on the operator and the aid. We studied whether it is possible to contribute to this objective by, apart from the operator, letting the aid as well calibrate trust in order to make reliance decisions. In addition, the aid's calibration of trust in reliance decision making capabilities of both the operator and itself is also expected to contribute, through reliance decision making on a metalevel, which we call metareliance decision making. In this paper we present a formalization of these two approaches: a reliance (RDMM) and metareliance decision making model (MetaRDMM), respectively. A combination of laboratory and simulation experiments shows significant improvements compared to reliance decision making solely done by operators.
机译:本文涉及使用自动决策辅助装置,其中有一个人的代理系统,其中有一个运算符以模式识别识别任务。目的是使得这种人类代理系统尽可能有效地运行。通过增加对运营商和援助的适当依赖性来获得有效性。我们研究了是否有可能除了运营商的情况下,让援助才能掌握信任,以使依赖决策。此外,援助对依赖竞争决策能力的信任的校准,也有望通过Reliance决策在Metalevel上进行谴责决策来贡献。在本文中,我们提出了这两种方法的形式化:依赖(RDMM)和元调决策模型(Metardmm)。与依赖性决策相比,实验室和仿真实验的组合显示出明显的改进,而与操作员仅完成。

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