Random Subspace Learning Approach to High-Dimensional Outliers Detection

02/16/2015
by   Bohan Liu, et al.
0

We introduce and develop a novel approach to outlier detection based on adaptation of random subspace learning. Our proposed method handles both high-dimension low-sample size and traditional low-dimensional high-sample size datasets. Essentially, we avoid the computational bottleneck of techniques like minimum covariance determinant (MCD) by computing the needed determinants and associated measures in much lower dimensional subspaces. Both theoretical and computational development of our approach reveal that it is computationally more efficient than the regularized methods in high-dimensional low-sample size, and often competes favorably with existing methods as far as the percentage of correct outlier detection is concerned.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/18/2020

High-dimensional outlier detection using random projections

There exist multiple methods to detect outliers in multivariate data in ...
research
05/05/2014

Robust Subspace Outlier Detection in High Dimensional Space

Rare data in a large-scale database are called outliers that reveal sign...
research
10/23/2022

Optimal Discriminant Analysis in High-Dimensional Latent Factor Models

In high-dimensional classification problems, a commonly used approach is...
research
09/30/2016

Outlier Detection from Network Data with Subnetwork Interpretation

Detecting a small number of outliers from a set of data observations is ...
research
07/12/2020

Simultaneous Feature Selection and Outlier Detection with Optimality Guarantees

Sparse estimation methods capable of tolerating outliers have been broad...
research
02/08/2020

SUOD: Toward Scalable Unsupervised Outlier Detection

Outlier detection is a key field of machine learning for identifying abn...
research
10/14/2020

Sample and Computationally Efficient Simulation Metamodeling in High Dimensions

Stochastic kriging has been widely employed for simulation metamodeling ...

Please sign up or login with your details

Forgot password? Click here to reset