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An improved negative selection approach for anomaly detection: with applications in medical diagnosis and quality inspection

机译:改进的用于异常检测的阴性选择方法:在医学诊断和质量检查中的应用

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摘要

Negative selection (NS) is one of the most discussed algorithms in artificial immune system (AIS). With its unique property for anomaly detection, it has attracted the attention of researchers in the past decades. However, the processes on how to generate representative detectors and how to define the matching rules remain to be challenges in many NS applications. These difficulties make NS suffer from high false-positive rates and computational complexities. On the other hand, the Mahalanobis distance (MD) is a popular distance metric used in distinguishing patterns of a certain group from those of another group. Compared with other multivariate measurement techniques, MD is superior in its ability to determine the similarity of a set of values from an unknown sample to a set of values measured from a collection of known samples. In this study, an MD-based NS called MDNS is proposed to improve the classification power for anomaly detection by providing the mechanism to judge the quality of detector cells as well as to be applied to define the matching rules and the threshold in a matching rule. Two real cases concerning medical diagnosis and quality inspection in highly reliable products are studied, and the results show that the performance of the NS can be significantly improved by using the proposed approach.
机译:负选择(NS)是人工免疫系统(AIS)中讨论最多的算法之一。凭借其异常检测的独特性能,在过去的几十年中,它引起了研究人员的关注。但是,在许多NS应用中,如何生成代表性检测器以及如何定义匹配规则的过程仍然是挑战。这些困难使NS遭受高假阳性率和计算复杂性的困扰。另一方面,马氏距离(MD)是一种流行的距离度量标准,用于区分某个组的模式与另一组的模式。与其他多变量测量技术相比,MD在确定未知样品中的一组值与一组已知样品中所测量的一组值的相似性方面具有优越的能力。在这项研究中,提出了一种基于MD的NS,称为MDNS,它通过提供判断检测器单元质量的机制以及用于定义匹配规则和匹配规则中的阈值的方法来提高异常检测的分类能力。 。研究了两个有关高度可靠产品的医学诊断和质量检查的实际案例,结果表明,使用所提出的方法可以显着提高NS的性能。

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