
TL;DR
This paper reviews the development of functional regression within FDA, discussing basis functions, different types of models, and future research directions in a comprehensive manner.
Contribution
It provides a detailed overview of functional regression methods, highlighting modeling structures, regularization techniques, and the evolution of the field.
Findings
Overview of basis functions in functional regression
Classification of functional regression models into three types
Discussion of methodological developments and future directions
Abstract
Functional data analysis (FDA) involves the analysis of data whose ideal units of observation are functions defined on some continuous domain, and the observed data consist of a sample of functions taken from some population, sampled on a discrete grid. Ramsay and Silverman's 1997 textbook sparked the development of this field, which has accelerated in the past 10 years to become one of the fastest growing areas of statistics, fueled by the growing number of applications yielding this type of data. One unique characteristic of FDA is the need to combine information both across and within functions, which Ramsay and Silverman called replication and regularization, respectively. This article will focus on functional regression, the area of FDA that has received the most attention in applications and methodological development. First will be an introduction to basis functions, key building…
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Taxonomy
TopicsMachine Learning and ELM · Statistical Methods and Inference · Face and Expression Recognition
