Litcius/Paper detail

Outlier Detection in High Dimensional Data

Firuz Kamalov, Ho Hon Leung

2020Journal of Information & Knowledge Management28 citationsDOIOpen Access PDF

Abstract

High-dimensional data poses unique challenges in outlier detection process. Most of the existing algorithms fail to properly address the issues stemming from a large number of features. In particular, outlier detection algorithms perform poorly on dataset of small size with a large number of features. In this paper, we propose a novel outlier detection algorithm based on principal component analysis and kernel density estimation. The proposed method is designed to address the challenges of dealing with high-dimensional data by projecting the original data onto a smaller space and using the innate structure of the data to calculate anomaly scores for each data point. Numerical experiments on synthetic and real-life data show that our method performs well on high-dimensional data. In particular, the proposed method outperforms the benchmark methods as measured by [Formula: see text]-score. Our method also produces better-than-average execution times compared with the benchmark methods.

Topics & Concepts

Anomaly detectionBenchmark (surveying)Computer scienceOutlierData miningPrincipal component analysisKernel (algebra)Kernel density estimationClustering high-dimensional dataPattern recognition (psychology)Data spaceRobust principal component analysisArtificial intelligenceHigh dimensionalAlgorithmData modelingAnomaly (physics)Kernel methodData pointData structureKernel principal component analysisComponent (thermodynamics)Machine learningSpace (punctuation)Big dataLocal outlier factorAnomaly Detection Techniques and ApplicationsMachine Learning and Data ClassificationTime Series Analysis and Forecasting
Outlier Detection in High Dimensional Data | Litcius