Extending the Generalised Pareto Distribution for Novelty Detection in High-Dimensional Spaces.

IF 1.6 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
David A Clifton, Lei Clifton, Samuel Hugueny, Lionel Tarassenko
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引用次数: 0

Abstract

Novelty detection involves the construction of a "model of normality", and then classifies test data as being either "normal" or "abnormal" with respect to that model. For this reason, it is often termed one-class classification. The approach is suitable for cases in which examples of "normal" behaviour are commonly available, but in which cases of "abnormal" data are comparatively rare. When performing novelty detection, we are typically most interested in the tails of the normal model, because it is in these tails that a decision boundary between "normal" and "abnormal" areas of data space usually lies. Extreme value statistics provides an appropriate theoretical framework for modelling the tails of univariate (or low-dimensional) distributions, using the generalised Pareto distribution (GPD), which can be demonstrated to be the limiting distribution for data occurring within the tails of most practically-encountered probability distributions. This paper provides an extension of the GPD, allowing the modelling of probability distributions of arbitrarily high dimension, such as occurs when using complex, multimodel, multivariate distributions for performing novelty detection in most real-life cases. We demonstrate our extension to the GPD using examples from patient physiological monitoring, in which we have acquired data from hospital patients in large clinical studies of high-acuity wards, and in which we wish to determine "abnormal" patient data, such that early warning of patient physiological deterioration may be provided.

Abstract Image

Abstract Image

Abstract Image

扩展广义帕累托分布,实现高维空间中的新颖性检测
新颖性检测涉及构建一个 "正态性模型",然后根据该模型将测试数据分为 "正常 "或 "异常 "两类。因此,这种方法通常被称为单类分类法。这种方法适用于 "正常 "行为的例子很常见,而 "异常 "数据的例子相对较少的情况。在进行新颖性检测时,我们通常对正态模型的尾部最感兴趣,因为数据空间中 "正常 "和 "异常 "区域的判定边界通常就在这些尾部。极值统计为单变量(或低维)分布的尾部建模提供了一个合适的理论框架,它使用广义帕累托分布(GPD),可以证明它是大多数实际遇到的概率分布尾部数据的极限分布。本文对 GPD 进行了扩展,允许对任意高维度的概率分布进行建模,例如在大多数实际案例中使用复杂、多模型、多变量分布进行新颖性检测时出现的情况。我们以病人生理监测为例,展示了我们对 GPD 的扩展。我们在高危病房的大型临床研究中获取了医院病人的数据,我们希望确定 "异常 "病人数据,以便提供病人生理恶化的早期预警。
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来源期刊
CiteScore
4.00
自引率
0.00%
发文量
106
审稿时长
4-8 weeks
期刊介绍: The Journal of Signal Processing Systems for Signal, Image, and Video Technology publishes research papers on the design and implementation of signal processing systems, with or without VLSI circuits. The journal is published in twelve issues and is distributed to engineers, researchers, and educators in the general field of signal processing systems.
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