自回归移动平均模型聚类的亲和系数

IF 0.9 Q3 MATHEMATICS, APPLIED Computational and Mathematical Methods Pub Date : 2024-05-24 DOI:10.1155/2024/5540143
Ana Paula Nascimento, Alexandra Oliveira, Brígida Mónica Faria, Rui Pimenta, Mónica Vieira, Cristina Prudêncio, Helena Bacelar-Nicolau
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引用次数: 0

摘要

在经济、金融、生物信息学、地质学和医学等各个领域,即在脑电图、心电图和生物技术领域,对时间序列进行聚类分析是必要的。聚类应用的第一步是建立时间序列之间的相似/不相似系数。本文介绍了对可逆自回归移动平均模型自回归展开的亲和系数的扩展,以衡量它们之间的相似性。利用估计的一阶模拟自回归移动平均的相应距离进行聚类分析。主要研究结果表明,具有相似预测功能的过程被分组(在同一聚类中),这符合亲和系数的预期。此外,还可以得出这样的结论,即该亲和系数对预测函数的行为变化非常敏感:预测函数差异较小的过程似乎被很好地分隔在不同的群组中。此外,如果两个过程至少有无数个具有对称信号的 π- 权重,那么亲和值也是对称的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Affinity Coefficient for Clustering Autoregressive Moving Average Models

In various fields, such as economics, finance, bioinformatics, geology, and medicine, namely, in the cases of electroencephalogram, electrocardiogram, and biotechnology, cluster analysis of time series is necessary. The first step in cluster applications is to establish a similarity/dissimilarity coefficient between time series. This article introduces an extension of the affinity coefficient for the autoregressive expansions of the invertible autoregressive moving average models to measure their similarity between them. An application of the affinity coefficient between time series was developed and implemented in R. Cluster analysis is performed with the corresponding distance for the estimated simulated autoregressive moving average of order one. The primary findings indicate that processes with similar forecast functions are grouped (in the same cluster) as expected concerning the affinity coefficient. It was also possible to conclude that this affinity coefficient is very sensitive to the behavior changes of the forecast functions: processes with small different forecast functions appear to be well separated in different clusters. Moreover, if the two processes have at least an infinite number of π- weights with a symmetric signal, the affinity value is also symmetric.

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