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An ontology based text mining system for knowledge discovery from the diagnosis data in the automotive domain

机译:基于本体的文本挖掘系统,用于从汽车领域的诊断数据中发现知识

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摘要

In automotive domain, overwhelming volume of textual data is recorded in the form of repair verbatim collected during the fault diagnosis (FD) process. Here, the aim of knowledge discovery using text mining (KDT) task is to discover the best-practice repair knowledge from millions of repair verbatim enabling accurate FD. However, the complexity of KDT problem is largely due to the fact that a significant amount of relevant knowledge is buried in noisy and unstructured verbatim. In this paper, we propose a novel ontology-based text mining system, which uses the diagnosis ontology for annotating key terms recorded in the repair verbatim. The annotated terms are extracted in different tuples, which are used to identify the field anomalies. The extracted tuples are further used by the frequently co-occurring clustering algorithm to cluster the repair verbatim data such that the best-practice repair actions used to fix commonly observed symptoms associated with the faulty parts can be discovered. The performance of our system has been validated by using the real world data and it has been successfully implemented in a web based distributed architecture in real life industry.
机译:在汽车领域,大量文本数据以在故障诊断(FD)过程中收集的逐字记录的形式记录下来。在这里,使用文本挖掘(KDT)任务进行知识发现的目的是从数以百万计的修复逐字记录中发现最佳实践的修复知识,从而实现准确的FD。但是,KDT问题的复杂性很大程度上是由于这样一个事实,即大量的相关知识被掩盖在嘈杂且无结构的逐字记录中。在本文中,我们提出了一种新颖的基于本体的文本挖掘系统,该系统使用诊断本体对逐字记录的关键术语进行注释。带注释的术语在不同的元组中提取,用于标识字段异常。频繁出现的聚类算法将提取的元组进一步用于对逐字记录数据进行聚类,以便可以发现用于修复与故障部件相关的常见症状的最佳实践修复操作。我们的系统的性能已通过使用真实世界的数据进行了验证,并且已成功地在现实生活行业的基于Web的分布式体系结构中实现。

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