学习近似诊断

Y. Fattah, P. O'Rorke
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引用次数: 2

摘要

在早期将基于解释的学习(EBL)整合到基于模型的诊断(MBD)中的工作中,提出了一种集成了EBL和MBD组件的诊断体系结构。作者放宽了对诊断候选人的完整性和特异性的要求。它们允许学习组件在训练阶段犯错误,而在训练阶段,它会得到有关其实际表现的反馈。本文描述了一种以精度换取效率的方法。在这种方法中,大多数诊断问题都是通过从以前的问题中学习到的关联规则来处理的。只有当性能下降到给定阈值以下时,才会激活基于模型的推理和学习。在具有越来越多组件的电路上提出了经验结果,说明了这种方法如何扩展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning approximate diagnosis
In earlier work on incorporating explanation-based learning (EBL) in model-based diagnosis (MBD), a diagnostic architecture integrating EBL and MBD components was suggested. The authors relax the requirement on completeness and specificity of the diagnostic candidates. They allow the learning component to make errors in a training phase where it is given feedback on its actual performance. A method is described for trading off accuracy for efficiency. In this approach, most diagnosis problems are handled by the associational rules learned from previous problems. Model-based reasoning and learning are activated only when performance drops below a given threshold. Empirical results are presented on circuits with an increasing number of components illustrating how this approach scales up.<>
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