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R1STM: one-class support tensor machine with randomised kernel

Version 2 2024-06-04, 06:14
Version 1 2016-11-29, 14:13
conference contribution
posted on 2024-06-04, 06:14 authored by SM Erfani, M Baktashmotlagh, Sutharshan RajasegararSutharshan Rajasegarar, V Nguyen, C Leckie, J Bailey, K Ramamohanarao
Identifying unusual or anomalous patterns in an underlying dataset is an important but challenging task in many applications. The focus of the unsupervised anomaly detection literature has mostly been on vectorised data. However, many applications are more naturally described using higher-order tensor representations. Approaches that vectorise tensorial data can destroy the structural information encoded in the high-dimensional space, and lead to the problem of the curse of dimensionality. In this paper we present the first unsupervised tensorial anomaly detection method, along with a randomised version of our method. Our anomaly detection method, the One-class Support Tensor Machine (1STM), is a generalisation of conventional one-class Support Vector Machines to higher-order spaces. 1STM preserves the multiway structure of tensor data, while achieving significant improvement in accuracy and efficiency over conventional vectorised methods. We then leverage the theory of nonlinear random projections to propose the Randomised 1STM (R1STM). Our empirical analysis on several real and synthetic datasets shows that our R1STM algorithm delivers comparable or better accuracy to a state-of-the-art deep learning method and traditional kernelised approaches for anomaly detection, while being approximately 100 times faster in training and testing.

History

Pagination

198-206

Location

Miami, Fla.

Open access

  • Yes

Start date

2016-05-05

End date

2016-05-07

ISSN

2167-0102

eISSN

2167-0099

ISBN-13

978-1-61197-434-8

Language

eng

Publication classification

E Conference publication, E1 Full written paper - refereed

Copyright notice

2016, Society for Industrial and Applied Mathematics

Editor/Contributor(s)

Venkatasubramanian SC, Meira W

Title of proceedings

SDM 2016 : Proceedings of 2016 SIAM International Conference on Data Mining

Event

Society for Industrial and Applied Mathematics. Conference (16th : 2016 : Miami, Florida)

Publisher

Society for Industrial and Applied Mathematics

Place of publication

Philadelphia, Pa.

Series

Society for Industrial and Applied Mathematics Conference