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El. knyga: Introduction to Functional Data Analysis [Taylor & Francis e-book]

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  • Taylor & Francis e-book
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Introduction to Functional Data Analysis provides a concise textbook introduction to the field. It explains how to analyze functional data, both at exploratory and inferential levels. It also provides a systematic and accessible exposition of the methodology and the required mathematical framework.





The book can be used as textbook for a semester-long course on FDA for advanced undergraduate or MS statistics majors, as well as for MS and PhD students in other disciplines, including applied mathematics, environmental science, public health, medical research, geophysical sciences and economics. It can also be used for self-study and as a reference for researchers in those fields who wish to acquire solid understanding of FDA methodology and practical guidance for its implementation. Each chapter contains plentiful examples of relevant R code and theoretical and data analytic problems.





The material of the book can be roughly divided into four parts of approximately equal length: 1) basic concepts and techniques of FDA, 2) functional regression models, 3) sparse and dependent functional data, and 4) introduction to the Hilbert space framework of FDA. The book assumes advanced undergraduate background in calculus, linear algebra, distributional probability theory, foundations of statistical inference, and some familiarity with R programming. Other required statistics background is provided in scalar settings before the related functional concepts are developed. Most chapters end with references to more advanced research for those who wish to gain a more in-depth understanding of a specific topic.



The book provides an introduction to functional data analysis (FDA), useful to students and researchers. FDA is now generally viewed as a fundamental subfield of statistics. FDA methods have been applied to science, business and engineering. 



 



 



 

1 First steps in the analysis of functional data
1(20)
1.1 Basis expansions
3(3)
1.2 Sample mean and covariance
6(4)
1.3 Principal component functions
10(1)
1.4 Analysis of BOA stock returns
11(3)
1.5 Diffusion tensor imaging
14(3)
1.6
Chapter 1 Problems
17(4)
2 Further topics in exploratory FDA
21(16)
2.1 Derivatives
21(1)
2.2 Penalized smoothing
22(6)
2.3 Curve alignment
28(6)
2.4 Further reading
34(1)
2.5
Chapter 2 Problems
34(3)
3 Mathematical framework for functional data
37(8)
3.1 Square integrable functions
38(1)
3.2 Random functions
39(3)
3.3 Linear transformations
42(3)
4 Scalar---on---function regression
45(22)
4.1 Examples
46(2)
4.2 Review of standard regression theory
48(3)
4.3 Difficulties specific to functional regression
51(3)
4.4 Estimation through a basis expansion
54(2)
4.5 Estimation with a roughness penalty
56(2)
4.6 Regression on functional principal components
58(2)
4.7 Implementation in the refund package
60(3)
4.8 Nonlinear scalar-on-function regression
63(1)
4.9
Chapter 4 Problems
64(3)
5 Functional response models
67(34)
5.1 Least squares estimation and application to angular motion
67(2)
5.2 Penalized least squares estimation
69(5)
5.3 Functional regressors
74(3)
5.4 Penalized estimation in the refund package
77(7)
5.5 Estimation based on functional principal components
84(3)
5.6 Test of no effect
87(2)
5.7 Verification of the validity of a functional linear model
89(3)
5.8 Extensions and further reading
92(1)
5.9
Chapter 5 Problems
93(8)
6 Functional generalized linear models
101(16)
6.1 Background
101(4)
6.2 Scalar-on-function GLM's
105(1)
6.3 Functional response GLM
106(1)
6.4 Implementation in the refund package
107(4)
6.5 Application to DTI
111(2)
6.6 Further reading
113(1)
6.7
Chapter 6 Problems
114(3)
7 Sparse FDA
117(24)
7.1 Introduction
117(5)
7.2 Mean function estimation
122(10)
7.3 Covariance function estimation
132(2)
7.4 Sparse functional PCA
134(3)
7.5 Sparse functional regression
137(1)
7.6
Chapter 7 Problems
138(3)
8 Functional time series
141(38)
8.1 Fundamental concepts of time series analysis
141(4)
8.2 Functional autoregressive process
145(3)
8.3 Forecasting with the Hyndman--Ullah method
148(6)
8.4 Forecasting with multivariate predictors
154(2)
8.5 Long-run covariance function
156(3)
8.6 Testing stationarity of functional time series
159(6)
8.7 Generation and estimation of the FAR(l) model using package fda
165(6)
8.8 Conditions for the existence of the FAR(l) process
171(2)
8.9 Further reading and other topics
173(1)
8.10
Chapter 8 Problems
174(5)
9 Spatial functional data and models
179(32)
9.1 Fundamental concepts of spatial statistics
180(4)
9.2 Functional spatial fields
184(1)
9.3 Functional kriging
184(2)
9.4 Mean function estimation
186(2)
9.5 Implementation in the R package geofd
188(6)
9.6 Other topics and further reading
194(12)
9.7
Chapter 9 Problems
206(5)
10 Elements of Hilbert space theory
211(22)
10.1 Hilbert space
211(4)
10.2 Projections and orthonormal sets
215(4)
10.3 Linear operators
219(4)
10.4 Basics of spectral theory
223(4)
10.5 Tensors
227(3)
10.6
Chapter 10 Problems
230(3)
11 Random functions
233(16)
11.1 Random elements in metric spaces
233(3)
11.2 Expectation and covariance in a Hilbert space
236(3)
11.3 Gaussian functions and limit theorems
239(2)
11.4 Functional principal components
241(4)
11.5
Chapter 11 Problems
245(4)
12 Inference from a random sample
249(30)
12.1 Consistency of sample mean and covariance functions
250(3)
12.2 Estimated functional principal components
253(5)
12.3 Asymptotic normality
258(3)
12.4 Hypothesis testing about the mean
261(8)
12.5 Confidence bands for the mean
269(3)
12.6 Application to BOA cumulative returns
272(2)
12.7 Proof of Theorem 12.2.1
274(2)
12.8
Chapter 12 Problems
276(3)
References 279(8)
Index 287
Piotr Kokoszka is a professor of statistics at Colorado State University. His research interests include functional data analysis, with emphasis on dependent data structures, and applications to geosciences and finance. He is a coauthor of the monograph Inference for Functional Data with Applications (with L. Horvįth). He is an associate editor of several journals, including Computational Statistics and Data Analysis, Journal of Multivariate Analysis, Journal of Time Series Analysis, and Scandinavian Journal of Statistics.





Matthew Reimherr is an assistant professor of statistics at Pennsylvania State University. His research interests include functional data analysis, with emphasis on longitudinal studies and applications to genetics and public health. He is an associate editor of Statistical Modeling.