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Some Issues About Outlier Detection In Rough Set Theory

机译:粗糙集理论中离群值检测的几个问题

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"One person's noise is another person's signal" (Knorr, E., Ng, R. (1998). Algorithms for mining distance-based outliers in large datasets. In Proceedings of the 24th VLDB conference, New York (pp. 392-403)). In recent years, much attention has been given to the problem of outlier detection, whose aim is to detect outliers - objects which behave in an unexpected way or have abnormal properties. Detecting such outliers is important for many applications such as criminal activities in electronic commerce, computer intrusion attacks, terrorist threats, agricultural pest infestations, etc. And outlier detection is critically important in the information-based society. In this paper, we discuss some issues about outlier detection in rough set theory which emerged about 20 years ago, and is nowadays a rapidly developing branch of artificial intelligence and soft computing. First, we propose a novel definition of outliers in information systems of rough set theory - sequence-based outliers. An algorithm to find such outliers in rough set theory is also given. The effectiveness of sequence-based method for outlier detection is demonstrated on two publicly available databases. Second, we introduce traditional distance-based outlier detection to rough set theory and discuss the definitions of distance metrics for distance-based outlier detection in rough set theory.
机译:“一个人的噪音就是另一个人的信号”(Knorr,E.,Ng,R。(1998年)。在大型数据集中挖掘基于距离的离群值的算法。在第24届VLDB会议上,纽约(第392-403页) ))。近年来,离群值检测问题引起了人们的极大关注,其目的是检测离群值-行为异常或具有异常特性的对象。检测此类离群值对于许多应用非常重要,例如电子商务中的犯罪活动,计算机入侵攻击,恐怖分子威胁,农业病虫害侵扰等。在基于信息的社会中,离群值检测至关重要。在本文中,我们讨论了大约20年前出现的粗糙集理论中的离群值检测的一些问题,如今它已成为人工智能和软计算的一个快速发展的分支。首先,我们提出了粗糙集理论信息系统中离群值的新定义-基于序列的离群值。还给出了在粗糙集理论中找到这种离群值的算法。在两个公共数据库中证明了基于序列的异常值检测方法的有效性。其次,我们将传统的基于距离的离群值检测引入粗糙集理论,并讨论粗糙集理论中基于距离的离群值检测的距离度量的定义。

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