Anomaly Detection Based on Convex Analysis: A Survey

Author:

Wang Tong,Cai Mengsi,Ouyang Xiao,Cao Ziqiang,Cai Tie,Tan Xu,Lu Xin

Abstract

As a crucial technique for identifying irregular samples or outlier patterns, anomaly detection has broad applications in many fields. Convex analysis (CA) is one of the fundamental methods used in anomaly detection, which contributes to the robust approximation of algebra and geometry, efficient computation to a unique global solution, and mathematical optimization for modeling. Despite the essential role and evergrowing research in CA-based anomaly detection algorithms, little work has realized a comprehensive survey of it. To fill this gap, we summarize the CA techniques used in anomaly detection and classify them into four categories of density estimation methods, matrix factorization methods, machine learning methods, and the others. The theoretical background, sub-categories of methods, typical applications as well as strengths and limitations for each category are introduced. This paper sheds light on a succinct and structured framework and provides researchers with new insights into both anomaly detection and CA. With the remarkable progress made in the techniques of big data and machine learning, CA-based anomaly detection holds great promise for more expeditious, accurate and intelligent detection capacities.

Funder

National Natural Science Foundation of China

Science and Technology Program of Hunan Province

Publisher

Frontiers Media SA

Subject

Physical and Theoretical Chemistry,General Physics and Astronomy,Mathematical Physics,Materials Science (miscellaneous),Biophysics

Reference141 articles.

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1. Regular 2k-Directional Polygon Algorithm for Finding the Convex Hulls of big data sets in 2D;2023 RIVF International Conference on Computing and Communication Technologies (RIVF);2023-12-23

2. Outliers in Shannon’s effective ionic radii table and the table extension by machine learning;Computational Materials Science;2023-09

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