A domain-specific decision support system for knowledge discovery using association and text mining

作者:Dnyanesh Rajpathak, Rahul Chougule, Pulak Bandyopadhyay

摘要

We propose a novel association and text mining system for knowledge discovery (ASTEK) from the warranty and service data in the automotive domain. The complex architecture of modern vehicles makes fault diagnosis and isolation a non-trivial task. The association mining isolates anomaly cases from the millions of service and claims records. ASTEK has shown 86% accuracy in correctly identifying the anomaly cases. The text mining subscribes to the diagnosis and prognosis (D&P) ontology, which provides the necessary domain-specific knowledge. The root causes associated with the anomaly cases are identified by discovering frequent symptoms associated with the part failures along with the repair actions used to fix the part failures. The best-practice knowledge is disseminated to the dealers involved in the anomaly cases. ASTEK has been implemented as a prototype in the service and quality department of GM and its performance has been validated in the real life set up. On an average, the analysis time is reduced from few weeks to few minutes, which in real life industry are significant improvements.

论文关键词:Data mining, Association mining, Text mining, Knowledge synthesis, Decision support for fault diagnosis, Ontology engineering

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论文官网地址:https://doi.org/10.1007/s10115-011-0409-1