离群值
局部异常因子
计算机科学
对象(语法)
异常检测
学位(音乐)
数据挖掘
财产(哲学)
二进制数
理论计算机科学
人工智能
数学
认识论
哲学
物理
算术
声学
作者
Markus Breunig,Hans‐Peter Kriegel,Raymond T. Ng,Jörg Sander
出处
期刊:Sigmod Record
[Association for Computing Machinery]
日期:2000-05-16
卷期号:29 (2): 93-104
被引量:4999
标识
DOI:10.1145/335191.335388
摘要
For many KDD applications, such as detecting criminal activities in E-commerce, finding the rare instances or the outliers, can be more interesting than finding the common patterns. Existing work in outlier detection regards being an outlier as a binary property. In this paper, we contend that for many scenarios, it is more meaningful to assign to each object a degree of being an outlier. This degree is called the local outlier factor (LOF) of an object. It is local in that the degree depends on how isolated the object is with respect to the surrounding neighborhood. We give a detailed formal analysis showing that LOF enjoys many desirable properties. Using real-world datasets, we demonstrate that LOF can be used to find outliers which appear to be meaningful, but can otherwise not be identified with existing approaches. Finally, a careful performance evaluation of our algorithm confirms we show that our approach of finding local outliers can be practical.
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