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Local outlier factor hyperparameter tuning for data outlier detection

机译:局部离群因子超参数调整,用于数据离群检测

摘要

A computing device determines hyperparameter values for outlier detection. An LOF score is computed for observation vectors using a neighborhood size value. Outlier observation vectors are selected from the observation vectors. Outlier mean and outlier variance values are computed of the LOF scores of the outlier observation vectors. Inlier observation vectors are selected from the observation vectors that have highest computed LOF scores of the observation vectors that are not included in the outlier observation vectors. Inlier mean and inlier variance values are computed of the LOF scores of the inlier observation vectors. A difference value is computed using the outlier mean and variance values and the inlier mean and variance values. The process is repeated with each neighborhood size value of a plurality of neighborhood size values. A tuned neighborhood size value is selected as the neighborhood size value associated with an extremum value of the difference value.
机译:计算设备确定用于离群值检测的超参数值。使用邻域大小值为观察向量计算LOF分数。从观察向量中选择异常观察向量。异常值均值和异常值方差值是由异常值观察向量的LOF分数计算得出的。从具有不包括在离群观察向量中的观察向量的具有最高计算LOF分数的观察向量中选择离群观察向量。内在均值和内在方差值是根据内在观察向量的LOF分数计算的。使用离群均值和方差值以及离群均值和方差值来计算差值。对多个邻域大小值中的每个邻域大小值重复该过程。选择调整后的邻域大小值作为与差值的极值相关联的邻域大小值。

著录项

  • 公开/公告号US10509847B1

    专利类型

  • 公开/公告日2019-12-17

    原文格式PDF

  • 申请/专利权人 SAS INSTITUTE INC.;

    申请/专利号US201916411214

  • 申请日2019-05-14

  • 分类号G06F17/18;G06F17/16;

  • 国家 US

  • 入库时间 2022-08-21 11:29:23

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