Functional Data Analysis: An Introduction and Recent Developments

IF 1.3 3区 生物学 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Jan Gertheiss, David Rügamer, Bernard X. W. Liew, Sonja Greven
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引用次数: 0

Abstract

Functional data analysis (FDA) is a statistical framework that allows for the analysis of curves, images, or functions on higher dimensional domains. The goals of FDA, such as descriptive analyses, classification, and regression, are generally the same as for statistical analyses of scalar-valued or multivariate data, but FDA brings additional challenges due to the high- and infinite dimensionality of observations and parameters, respectively. This paper provides an introduction to FDA, including a description of the most common statistical analysis techniques, their respective software implementations, and some recent developments in the field. The paper covers fundamental concepts such as descriptives and outliers, smoothing, amplitude and phase variation, and functional principal component analysis. It also discusses functional regression, statistical inference with functional data, functional classification and clustering, and machine learning approaches for functional data analysis. The methods discussed in this paper are widely applicable in fields such as medicine, biophysics, neuroscience, and chemistry and are increasingly relevant due to the widespread use of technologies that allow for the collection of functional data. Sparse functional data methods are also relevant for longitudinal data analysis. All presented methods are demonstrated using available software in R by analyzing a dataset on human motion and motor control. To facilitate the understanding of the methods, their implementation, and hands-on application, the code for these practical examples is made available through a code and data supplement and on GitHub.

Abstract Image

功能数据分析:导论与最新发展
函数数据分析(FDA)是一种统计框架,可用于分析高维域上的曲线、图像或函数。函数数据分析的目标,如描述性分析、分类和回归,与标量值或多变量数据统计分析的目标大致相同,但由于观测值和参数分别具有高维和无限维,函数数据分析带来了额外的挑战。本文介绍了 FDA,包括最常见的统计分析技术、各自的软件实现以及该领域的一些最新进展。本文涵盖了一些基本概念,如描述值和离群值、平滑、振幅和相位变化以及函数主成分分析。论文还讨论了功能回归、功能数据统计推断、功能分类和聚类,以及用于功能数据分析的机器学习方法。本文讨论的方法可广泛应用于医学、生物物理学、神经科学和化学等领域,而且由于可收集功能数据的技术的广泛应用,这些方法的相关性日益增强。稀疏功能数据方法也适用于纵向数据分析。通过分析人类运动和运动控制的数据集,使用现有的 R 软件演示了所有介绍的方法。为了便于理解这些方法、实现这些方法以及进行实际应用,我们通过代码和数据补充以及 GitHub 提供了这些实际示例的代码。
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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来源期刊
Biometrical Journal
Biometrical Journal 生物-数学与计算生物学
CiteScore
3.20
自引率
5.90%
发文量
119
审稿时长
6-12 weeks
期刊介绍: Biometrical Journal publishes papers on statistical methods and their applications in life sciences including medicine, environmental sciences and agriculture. Methodological developments should be motivated by an interesting and relevant problem from these areas. Ideally the manuscript should include a description of the problem and a section detailing the application of the new methodology to the problem. Case studies, review articles and letters to the editors are also welcome. Papers containing only extensive mathematical theory are not suitable for publication in Biometrical Journal.
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