功能时间序列的监督降维

IF 1.2 3区 数学 Q2 STATISTICS & PROBABILITY Statistical Papers Pub Date : 2024-04-16 DOI:10.1007/s00362-023-01505-1
Guochang Wang, Zengyao Wen, Shanming Jia, Shanshan Liang
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引用次数: 0

摘要

函数时间序列模型是近年来研究最多的主题,由于函数数据是无限维的,因此降维对函数时间序列至关重要。然而,现有的大多数降维方法,如函数主成分和定基扩展,都是无监督的,通常会导致信息丢失。因此,函数时间序列模型迫切需要一种有监督的降维方法。函数充分降维方法是一种有监督的技术,它能充分挖掘回归结构信息,使信息损失最小。函数切分反回归(FSIR)是最流行的函数充分降维方法,但它不能直接应用于函数时间序列模型。在本文中,我们研究了一个函数时间序列模型,其中响应是标量时间序列,解释变量是函数时间序列。我们结合 FSIR 和盲源分离方法,为回归模型提出了一种新颖的监督降维技术。此外,我们还提出了选择降维空间维度和函数时间序列滞后期的创新策略。包括模拟研究和真实数据分析在内的数值研究表明了所提方法的有效性。
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Supervised dimension reduction for functional time series

Functional time series model has been the subject of the most research in recent years, and since functional data is infinite dimensional, dimension reduction is essential for functional time series. However, the majority of the existing dimension reduction methods such as the functional principal component and fixed basis expansion are unsupervised and typically result in information loss. Then, the functional time series model has an urgent need for a supervised dimension reduction method. The functional sufficient dimension reduction method is a supervised technique that adequately exploits the regression structure information, resulting in minimal information loss. Functional sliced inverse regression (FSIR) is the most popular functional sufficient dimension reduction method, but it cannot be applied directly to functional time series model. In this paper, we examine a functional time series model in which the response is a scalar time series and the explanatory variable is functional time series. We propose a novel supervised dimension reduction technique for the regression model by combining the FSIR and blind source separation methods. Furthermore, we propose innovative strategies for selecting the dimensionality of dimension reduction space and the lags of the functional time series. Numerical studies, including simulation studies and a real data analysis are show the effectiveness of the proposed methods.

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来源期刊
Statistical Papers
Statistical Papers 数学-统计学与概率论
CiteScore
2.80
自引率
7.70%
发文量
95
审稿时长
6-12 weeks
期刊介绍: The journal Statistical Papers addresses itself to all persons and organizations that have to deal with statistical methods in their own field of work. It attempts to provide a forum for the presentation and critical assessment of statistical methods, in particular for the discussion of their methodological foundations as well as their potential applications. Methods that have broad applications will be preferred. However, special attention is given to those statistical methods which are relevant to the economic and social sciences. In addition to original research papers, readers will find survey articles, short notes, reports on statistical software, problem section, and book reviews.
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