Learning Novelty Detection Outside a Class of Random Curves with Application to COVID-19 Growth

IF 3.3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Artificial Intelligence and Soft Computing Research Pub Date : 2021-05-29 DOI:10.2478/jaiscr-2021-0012
Wojciech Rafajłowicz
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引用次数: 1

Abstract

Abstract Let a class of proper curves is specified by positive examples only. We aim to propose a learning novelty detection algorithm that decides whether a new curve is outside this class or not. In opposite to the majority of the literature, two sources of a curve variability are present, namely, the one inherent to curves from the proper class and observations errors’. Therefore, firstly a decision function is trained on historical data, and then, descriptors of each curve to be classified are learned from noisy observations.When the intrinsic variability is Gaussian, a decision threshold can be established from T 2 Hotelling distribution and tuned to more general cases. Expansion coefficients in a selected orthogonal series are taken as descriptors and an algorithm for their learning is proposed that follows nonparametric curve fitting approaches. Its fast version is derived for descriptors that are based on the cosine series. Additionally, the asymptotic normality of learned descriptors and the bound for the probability of their large deviations are proved. The influence of this bound on the decision threshold is also discussed.The proposed approach covers curves described as functional data projected onto a finite-dimensional subspace of a Hilbert space as well a shape sensitive description of curves, known as square-root velocity (SRV). It was tested both on synthetic data and on real-life observations of the COVID-19 growth curves.
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一类随机曲线外学习新颖性检测及其在COVID-19生长中的应用
摘要设一类正曲线仅由正例指定。我们的目的是提出一种学习新颖性检测算法,该算法决定新曲线是否在该类之外。与大多数文献相反,曲线可变性有两个来源,即来自适当类别的曲线固有的来源和观测误差。因此,首先在历史数据上训练决策函数,然后从噪声观测中学习每个要分类的曲线的描述符。当内在变异性是高斯时,可以从T2霍特林分布建立决策阈值,并将其调整到更一般的情况。以所选正交序列中的展开系数为描述符,提出了一种遵循非参数曲线拟合方法的展开系数学习算法。它的快速版本是为基于余弦级数的描述符派生的。此外,还证明了学习描述符的渐近正态性及其大偏差概率的界。文中还讨论了该界对决策阈值的影响。所提出的方法涵盖了被描述为投影到希尔伯特空间的有限维子空间上的函数数据的曲线,以及被称为平方根速度(SRV)的曲线的形状敏感描述。它在合成数据和新冠肺炎增长曲线的真实观察中进行了测试。
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来源期刊
Journal of Artificial Intelligence and Soft Computing Research
Journal of Artificial Intelligence and Soft Computing Research COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
7.00
自引率
25.00%
发文量
10
审稿时长
24 weeks
期刊介绍: Journal of Artificial Intelligence and Soft Computing Research (available also at Sciendo (De Gruyter)) is a dynamically developing international journal focused on the latest scientific results and methods constituting traditional artificial intelligence methods and soft computing techniques. Our goal is to bring together scientists representing both approaches and various research communities.
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