Maximum Likelihood Outlier Detection

时间:2022-12-20 05:54:27
【文件属性】:

文件名称:Maximum Likelihood Outlier Detection

文件大小:8KB

文件格式:ZIP

更新时间:2022-12-20 05:54:27

算法 Maximum Likeliho

• Maximum Likelihood Outlier Detection (MLOD) is an inlier-based outlier detection algorithm. The problem of inlier-based outlier detection is to find outliers in a set of samples (called the evaluation set) using another set of samples which consists only of inliers (called the model set). MLOD orders the samples in the evaluation set according to their degree of outlyingness. The degree of outlyingness is measured by the ratio of probability densities of evaluation and model samples. The ratio is estimated by the density-ratio estimation method KLIEP.


【文件预览】:
KLIEP.m
KLIEP_learning.m
MLOD.eps
KLIEP_projection.m
demo_MLOD.m
pdf_Gaussian.m
kernel_Gaussian.m

网友评论