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A New Local Distance-Based Outlier Detection Approach for Scattered Real-World Data

机译:一种新的基于局部距离的离散真实世界数据离群值检测方法

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摘要

Detecting outliers which are grossly different from or inconsistent with the remaining dataset is a major challenge in real-world KDD applications. Existing outlier detection methods are ineffective on scattered real-world datasets due to implicit data patterns and parameter setting issues. We define a novel Local Distance-based Outlier Factor (LDOF) to measure the outlier-ness of objects in scattered datasets which addresses these issues. LDOF uses the relative location of an object to its neighbours to determine the degree to which the object deviates from its neighbourhood. We present theoretical bounds on LDOF's false-detection probability. Experimentally, LDOF compares favorably to classical KNN and LOF based outlier detection. In particular it is less sensitive to parameter values.
机译:在实际的KDD应用程序中,检测与其余数据集完全不同或不一致的异常值是一个重大挑战。由于隐含的数据模式和参数设置问题,现有的异常值检测方法对分散的现实世界数据集无效。我们定义了一种新颖的基于局部距离的离群因子(LDOF),用于测量分散数据集中对象的离群值,从而解决了这些问题。 LDOF使用对象相对于其邻居的相对位置来确定对象偏离其邻域的程度。我们提出了LDOF的误检概率的理论界限。实验上,LDOF优于传统的基于KNN和LOF的异常检测。特别是它对参数值不太敏感。

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  • 来源
  • 会议地点 Bangkok(TH);Bangkok(TH)
  • 作者单位

    RSISE, Australian National University;

    RSISE, Australian National University National ICT Australia (NICTA), Canberra Lab, ACT, Australia;

    RSISE, Australian National University National ICT Australia (NICTA), Canberra Lab, ACT, Australia CSIRO Mathematical and Information Sciences, Acton ACT 2601, Australia;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP311.13;
  • 关键词

    local outlier; scattered data; k-distance; KNN; LOF; LDOF;

    机译:局部离群值分散的数据; k距离KNN; LOF;低氧;

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