Interpreting Outliers: Localized Logistic Regression for Density Ratio Estimation

02/21/2017
by   Makoto Yamada, et al.
0

We propose an inlier-based outlier detection method capable of both identifying the outliers and explaining why they are outliers, by identifying the outlier-specific features. Specifically, we employ an inlier-based outlier detection criterion, which uses the ratio of inlier and test probability densities as a measure of plausibility of being an outlier. For estimating the density ratio function, we propose a localized logistic regression algorithm. Thanks to the locality of the model, variable selection can be outlier-specific, and will help interpret why points are outliers in a high-dimensional space. Through synthetic experiments, we show that the proposed algorithm can successfully detect the important features for outliers. Moreover, we show that the proposed algorithm tends to outperform existing algorithms in benchmark datasets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/05/2014

Finding Inner Outliers in High Dimensional Space

Outlier detection in a large-scale database is a significant and complex...
research
09/28/2011

Robust Parametric Classification and Variable Selection by a Minimum Distance Criterion

We investigate a robust penalized logistic regression algorithm based on...
research
06/09/2011

Intelligent decision: towards interpreting the Pe Algorithm

The human intelligence lies in the algorithm, the nature of algorithm li...
research
03/11/2023

Interpretable Outlier Summarization

Outlier detection is critical in real applications to prevent financial ...
research
01/14/2019

CFOF: A Concentration Free Measure for Anomaly Detection

We present a novel notion of outlier, called the Concentration Free Outl...
research
05/24/2023

Centering the Margins: Outlier-Based Identification of Harmed Populations in Toxicity Detection

A standard method for measuring the impacts of AI on marginalized commun...
research
05/16/2018

On Difference Between Two Types of γ-divergence for Regression

The γ-divergence is well-known for having strong robustness against heav...

Please sign up or login with your details

Forgot password? Click here to reset