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Oxford Handbook of Functional Data Analysis [Kõva köide]

Edited by (, Toulouse University, France), Edited by (, Toulouse University, France)
  • Formaat: Hardback, 514 pages, kõrgus x laius x paksus: 255x181x34 mm, kaal: 1054 g, 26 b/w line drawings
  • Sari: Oxford Handbooks
  • Ilmumisaeg: 25-Nov-2010
  • Kirjastus: Oxford University Press
  • ISBN-10: 0199568448
  • ISBN-13: 9780199568444
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  • Formaat: Hardback, 514 pages, kõrgus x laius x paksus: 255x181x34 mm, kaal: 1054 g, 26 b/w line drawings
  • Sari: Oxford Handbooks
  • Ilmumisaeg: 25-Nov-2010
  • Kirjastus: Oxford University Press
  • ISBN-10: 0199568448
  • ISBN-13: 9780199568444
"As technology progresses, we are able to handle larger and larger datasets. At the same time, monitoring devices such as electronic equipment and sensors (for registering images, temperature, etc.) have become more and more sophisticated. This high-tech revolution offers the opportunity to observe phenomena in an increasingly accurate way by producing statistical units sampled over a finer and finer grid, with the measurement points so close that the data can be considered as observations varying over acontinuum. Such continuous (or functional) data may occur in biomechanics (e.g. human movements), chemometrics (e.g. spectrometric curves), econometrics (e.g. the stock market index), geophysics (e.g. spatio-temporal events such as El Nino or time seriesof satellite images), or medicine (electro-cardiograms/electro-encephalograms). It is well known that standard multivariate statistical analyses fail with functional data. However, the great potential for applications has encouraged new methodologies able to extract relevant information from functional datasets. This Handbook aims to present a state of the art exploration of this high-tech field, by gathering together most of major advances in this area. Leading international experts have contributed tothis volume with each chapter giving the key original ideas and comprehensive bibliographical information. The main statistical topics (classification, inference, factor-based analysis, regression modelling, resampling methods, time series, random processes) are covered in the setting of functional data. The twin challenges of the subject are the practical issues of implementing new methodologies and the theoretical techniques needed to expand the mathematical foundations and toolbox. The volume therefore mixes practical, methodological and theoretical aspects of the subject, sometimes within the same chapter. As a consequence, this book should appeal to a wide audience of engineers, practitioners and graduate students, as well as academic researchers,not only in statistics and probability but also in the numerous related application areas"--

"As technology progresses, we are able to handle larger and larger datasets. At the same time, monitoring devices such as electronic equipment and sensors (for registering images, temperature, etc.) have become more and more sophisticated. This high-tech revolution offers the opportunity to observe phenomena in an increasingly accurate way by producing statistical units sampled over a finer and finer grid, with the measurement points so close that the data can be considered as observations varying over acontinuum. Such continuous (or functional) data may occur in biomechanics (e.g. human movements), chemometrics (e.g. spectrometric curves), econometrics (e.g. the stock market index), geophysics (e.g. spatio-temporal events such as El Nino or time seriesof satellite images), or medicine (electro-cardiograms/electro-encephalograms). It is well known that standard multivariate statistical analyses fail with functional data. However, the great potential for applications has encouraged new methodologies able to extract relevant information from functional datasets. This Handbook aims to present a state of the art exploration of this high-tech field, by gathering together most of major advances in this area. Leading international experts have contributed to this volume with each chapter giving the key original ideas and comprehensive bibliographical information. The main statistical topics (classification, inference, factor-based analysis, regression modelling, resampling methods, time series, random processes) are covered in the setting of functional data. The twin challenges of the subject are the practical issues of implementing new methodologies and the theoretical techniques needed to expand the mathematical foundations and toolbox. The volume thereforemixes practical, methodological and theoretical aspects of the subject, sometimes within the same chapter. As a consequence, this book should appeal to a wide audience of engineers, practitioners and graduate students, as well as academic researchers, not only in statistics and probability but also in the numerous related application areas"--Provided by publisher.

Provided by publisher.

As technology progresses, we are able to handle larger and larger datasets. At the same time, monitoring devices such as electronic equipment and sensors (for registering images, temperature, etc.) have become more and more sophisticated. This high-tech revolution offers the opportunity to observe phenomena in an increasingly accurate way by producing statistical units sampled over a finer and finer grid, with the measurement points so close that the data can be considered as observations varying over a continuum. Such continuous (or functional) data may occur in biomechanics (e.g. human movements), chemometrics (e.g. spectrometric curves), econometrics (e.g. the stock market index), geophysics (e.g. spatio-temporal events such as El Nino or time series of satellite images), or medicine (electro-cardiograms/electro-encephalograms).

It is well known that standard multivariate statistical analyses fail with functional data. However, the great potential for applications has encouraged new methodologies able to extract relevant information from functional datasets. This Handbook aims to present a state of the art exploration of this high-tech field, by gathering together most of major advances in this area. Leading international experts have contributed to this volume with each chapter giving the key original ideas and comprehensive bibliographical information. The main statistical topics (classification, inference, factor-based analysis, regression modelling, resampling methods, time series, random processes) are covered in the setting of functional data.

The twin challenges of the subject are the practical issues of implementing new methodologies and the theoretical techniques needed to expand the mathematical foundations and toolbox. The volume therefore mixes practical, methodological and theoretical aspects of the subject, sometimes within the same chapter. As a consequence, this book should appeal to a wide audience of engineers, practitioners and graduate students, as well as academic researchers, not only in statistics and probability but also in the numerous related application areas.
List of Contributors
xiii
List of Figures
xv
List of Datasets
xvii
Part I Regression Modeling for FDA
1 A unifying classification for functional regression modeling
3(18)
Frederic Ferraty
Philippe Vieu
2 Functional linear regression
21(26)
Herve Cardot
Pascal Sarda
3 Linear processes for functional data
47(25)
Andre Mas
Besnik Pumo
4 Kernel regression estimation for functional data
72(58)
Frederic Ferraty
Philippe Vieu
5 Nonparametric methods for α-mixing functional random variables
130(36)
Laurent Delsol
6 Functional coefficient models for economic and financial data
166(23)
Zongwu Cai
Part II Benchmark Methods for Fda
7 Resampling methods for functional data
189(21)
Timothy McMurry
Dimitris Politis
8 Principal component analysis for functional data: methodology, theory, and discussion
210(25)
Peter Hall
9 Curve registration
235(24)
James Ramsay
10 Classification methods for functional data
259(39)
Amparo Baillo
Antonio Cuevas
Ricardo Fraiman
11 Sparseness and functional data analysis
298(29)
Gareth James
Part III Towards a Stochastic Background in Infinite-Dimensional Spaces
12 Vector integration and stochastic integration in Banach spaces
327(28)
Nicolae Dinculeanu
13 Operator geometry in statistics
355(28)
Karl Gustafson
14 On Bernstein type and maximal inequalities for dependent Banach-valued random vectors and applications
383(40)
Noureddine Rhomari
15 On product measures associated with stationary processes
423(29)
Alain Boudou
Yves Romain
16 An invitation to operator-based statistics
452(31)
Yves Romain
Index 483
Frédéric Ferraty is a researcher in Statistics at Toulouse University (France). He has been working on all facets of Statistics, ranging from fundamental theory basis, methodology developments to practical implementation. In addition, most of major topics of Statistics as Classification, Exploratory Methods, Regression, Time Series have been investigated. In the last decade, he mainly oriented his research towards high dimensional statistical problems involving systematically functional data. His numerous statistical contributions have been published in prestigious international statistical journals. He is also a prominent and very active member of the international statistical community through co-organizations of several international scientific events and numerous editorial works for publishers and statistical journals of high scientific level.

Yves Romain is an academic researcher at Institute of Mathematics of Toulouse (France). He is Doctor in Applied Mathematics and HDR in Statistics. His main research domains are multivariate analyses in large dimension and related fields such as operator-based statistics and backgrounds for statistics in infinite-dimensional spaces.