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How many diagnoses do we need?

机译:我们需要多少个诊断?

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A known limitation of many diagnosis algorithms is that the number of diagnoses they return can be very large. This is both time consuming and not very helpful from the perspective of a human operator: presenting hundreds of diagnoses to a human operator (charged with repairing the system) is meaningless. In various settings, including decision support for a human operator and automated troubleshooting processes, it is sufficient to be able to answer a basic diagnostic question: is a given component faulty? We propose a way to aggregate an arbitrarily large set of diagnoses to return an estimate of the likelihood of a given component to be faulty. The resulting mapping of components to their likelihood of being faulty is called the system's health state. We propose two metrics for evaluating the accuracy of a health state and show that an accurate health state can be found without finding all diagnoses. An empirical study explores the question of how many diagnoses are needed to obtain an accurate enough health state, and an online stopping criteria is proposed.
机译:许多诊断算法的一个已知限制是它们返回的诊断数量可能非常大。从操作人员的角度来看,这既耗时又无济于事:向操作人员提出数百个诊断(负责维修系统)是没有意义的。在各种设置中,包括对操作员的决策支持和自动故障排除流程,足以回答一个基本的诊断问题:给定的组件是否有故障?我们提出了一种汇总任意组诊断的方法,以返回给定组件发生故障的可能性的估计值。组件到其出现故障可能性的最终映射关系称为系统的健康状态。我们提出了两个指标来评估健康状态的准确性,并表明可以在没有找到所有诊断的情况下找到准确的健康状态。一项经验研究探讨了需要多少次诊断才能获得足够准确的健康状态的问题,并提出了在线停止标准。

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