Unsupervised Root-Cause Analysis for Integrated Systems

2020 IEEE International Test Conference (ITC)(2020)

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摘要
The increasing complexity and high cost of integrated systems has placed immense pressure on root-cause analysis and diagnosis. In light of artificial intelligent and machine learning, a large amount of intelligent root-cause analysis methods have been proposed. However, most of them need historical test data with root-cause labels from repair history, which are often difficult and expensive to obtain. In this paper, we propose a two-stage unsupervised root-cause analysis method in which no repair history is needed. In the first stage, a decision-tree model is trained with system test information to roughly cluster the data. In the second stage, frequent-pattern mining is applied to extract frequent patterns in each decision-tree node to precisely cluster the data so that each cluster represents only a small number of root causes. In additional, L-method and cross validation are applied to automatically determine the hyper-parameters of our algorithm. Two industry case studies with system test data demonstrate that the proposed approach significantly outperforms the state-of-the-art unsupervised root-cause analysis method.
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关键词
intelligent root-cause analysis methods,historical test data,root-cause labels,two-stage unsupervised root-cause analysis method,decision-tree model,system test information,frequent-pattern mining,decision-tree node,cross validation,system test data,integrated systems,artificial intelligent,machine learning,L-method
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