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CBR Confidence as a Basis for Confidence in Black Box Systems

机译:CBR充满信心是对黑匣子系统信心的基础

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Determining when to trust black box systems is a well-known challenge. An important factor affecting users' trust is confidence in system solutions. Previous case-based reasoning (CBR) research has developed criteria for assigning confidence to the solutions of a CBR system. This paper investigates whether such analysis, coupled with factors such as CBR system competence, can be used to predict confidence in the outputs of a black box system, when the black box and CBR systems are provided with the same training data. The paper presents initial strategies for using CBR confidence to predict black box system confidence. An evaluation explores the ability of the strategies to provide useful information and suggests future questions.
机译:确定何时信任黑匣子系统是一个众所周知的挑战。影响用户信任的重要因素是对系统解决方案的信心。以前的基于案例的推理(CBR)研究已经开发了为CBR系统的解决方案分配信心的标准。本文调查了这种分析,加上CBR系统能力等因素,可用于预测黑盒子和CBR系统具有相同训练数据的黑盒系统的输出中的置信度。本文提出了利用CBR信心预测黑匣子系统信心的初始策略。评估探讨了策略提供有用信息并表明未来问题的能力。

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