NOVELTY DETECTION WITH MULTIVARIATE EXTREME VALUE THEORY, PART I: A NUMERICAL APPROACH TO MULTIMODAL ESTIMATION

Extreme Value Theory (EVT) describes the distribution of data considered extreme with respect to some generative distribution, effectively modelling the tails of that distribution. In novelty detection, we wish to determine if data are "normal" with respect to some model of normality. If t...

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Main Authors: Clifton, D, Hugueny, S, Tarassenko, L, IEEE
Format: Conference item
Published: 2009
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author Clifton, D
Hugueny, S
Tarassenko, L
IEEE
author_facet Clifton, D
Hugueny, S
Tarassenko, L
IEEE
author_sort Clifton, D
collection OXFORD
description Extreme Value Theory (EVT) describes the distribution of data considered extreme with respect to some generative distribution, effectively modelling the tails of that distribution. In novelty detection, we wish to determine if data are "normal" with respect to some model of normality. If that model consists of generative distributions, then EVT is appropriate for describing the behaviour of extrema generated from the model, and can be used to separate "normal" areas from "abnormal" areas of feature space in a principled manner. In a companion paper, we show that existing work in the use of EVT for novelty detection does not accurately describe the extrema of multimodal, multivariate distributions and propose a numerical method for overcoming such problems. In this paper, we introduce an analytical approach to obtain closed-form solutions for the extreme value distributions of multivariate Gaussian distributions and present an application to vital-sign monitoring. © 2009 IEEE.
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spelling oxford-uuid:02366c74-de84-4d3a-bb06-49f0394890d02022-03-26T08:39:24ZNOVELTY DETECTION WITH MULTIVARIATE EXTREME VALUE THEORY, PART I: A NUMERICAL APPROACH TO MULTIMODAL ESTIMATIONConference itemhttp://purl.org/coar/resource_type/c_5794uuid:02366c74-de84-4d3a-bb06-49f0394890d0Symplectic Elements at Oxford2009Clifton, DHugueny, STarassenko, LIEEEExtreme Value Theory (EVT) describes the distribution of data considered extreme with respect to some generative distribution, effectively modelling the tails of that distribution. In novelty detection, we wish to determine if data are "normal" with respect to some model of normality. If that model consists of generative distributions, then EVT is appropriate for describing the behaviour of extrema generated from the model, and can be used to separate "normal" areas from "abnormal" areas of feature space in a principled manner. In a companion paper, we show that existing work in the use of EVT for novelty detection does not accurately describe the extrema of multimodal, multivariate distributions and propose a numerical method for overcoming such problems. In this paper, we introduce an analytical approach to obtain closed-form solutions for the extreme value distributions of multivariate Gaussian distributions and present an application to vital-sign monitoring. © 2009 IEEE.
spellingShingle Clifton, D
Hugueny, S
Tarassenko, L
IEEE
NOVELTY DETECTION WITH MULTIVARIATE EXTREME VALUE THEORY, PART I: A NUMERICAL APPROACH TO MULTIMODAL ESTIMATION
title NOVELTY DETECTION WITH MULTIVARIATE EXTREME VALUE THEORY, PART I: A NUMERICAL APPROACH TO MULTIMODAL ESTIMATION
title_full NOVELTY DETECTION WITH MULTIVARIATE EXTREME VALUE THEORY, PART I: A NUMERICAL APPROACH TO MULTIMODAL ESTIMATION
title_fullStr NOVELTY DETECTION WITH MULTIVARIATE EXTREME VALUE THEORY, PART I: A NUMERICAL APPROACH TO MULTIMODAL ESTIMATION
title_full_unstemmed NOVELTY DETECTION WITH MULTIVARIATE EXTREME VALUE THEORY, PART I: A NUMERICAL APPROACH TO MULTIMODAL ESTIMATION
title_short NOVELTY DETECTION WITH MULTIVARIATE EXTREME VALUE THEORY, PART I: A NUMERICAL APPROACH TO MULTIMODAL ESTIMATION
title_sort novelty detection with multivariate extreme value theory part i a numerical approach to multimodal estimation
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AT tarassenkol noveltydetectionwithmultivariateextremevaluetheorypartianumericalapproachtomultimodalestimation
AT ieee noveltydetectionwithmultivariateextremevaluetheorypartianumericalapproachtomultimodalestimation