
Weak Dependence
With Examples and Applications
By: Jrme Dedecker, Paul Doukhan, Gabriel Lang
Paperback | 15 August 2007
At a Glance
336 Pages
23.39 x 15.6 x 1.78
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Industry Reviews
From the reviews:
"I appreciate this book as a very welcome and thorough discussion of the actual state-of-the art in the modeling of dependence structures. It provides a large number of motivating examples and applications, rigorous proofs, and valuable intuitions for the willing and mathematically well-trained reader with essential prior knowledge of the mathematical prerequisites of weak dependence ... . It is ... the book to those researchers already aware of the necessity of the methods discussed here." (Harry Haupt, Advances in Statistical Analysis, Vol. 93, 2009)
"This book ... provides a detailed description of the notion of weak dependence as well as properties and applications. ... Overall the book is neatly written ... . the book is very rich in its material as it contains earlier works on dependence and ... show a lot of applications of the theory. It also contains a large number of examples and expositions of the idea of weak dependence in models ... which provide good insight." (Dimitris Karlis, Zentralblatt MATH, Vol. 1165, 2009)
Preface | p. v |
List of notations | p. xiii |
Introduction | p. 1 |
From independence to dependence | p. 1 |
Mixing | p. 4 |
Mixingales and near epoch dependence | p. 5 |
Association | p. 6 |
Nonmixing models | p. 8 |
Weak dependence | p. 9 |
Function spaces | p. 10 |
Weak dependence | p. 11 |
, , and (-coefficients | p. 12 |
and -coefficients | p. 14 |
<$>tilde alpha<$>, <$>tilde beta<$> and <$>tilde phi<$>-coefficients | p. 16 |
Projective measure of dependence | p. 19 |
Models | p. 21 |
Bernoulli shifts | p. 21 |
Volterra processes | p. 22 |
Noncausal shifts with independent inputs | p. 24 |
Noncausal shifts with dependent inputs | p. 25 |
Causal shifts with independent inputs | p. 31 |
Causal shifts with dependent inputs | p. 32 |
Markov sequences | p. 33 |
Contracting Markov chain | p. 35 |
Nonlinear AR(d) models | p. 36 |
ARCH-type processes | p. 36 |
Branching type models | p. 37 |
Dynamical systems | p. 38 |
Vector valued LARCH(∞) processes | p. 42 |
Chaotic expansion of LARCH(∞) models | p. 43 |
Bilinear models | p. 48 |
-dependent models | p. 53 |
Associated processes | p. 53 |
Gaussian processes | p. 55 |
Interacting particle systems | p. 56 |
Other models | p. 59 |
Random AR models | p. 59 |
Integer valued models | p. 61 |
Random fields | p. 62 |
Continuous time | p. 65 |
Tools for non causal cases | p. 67 |
Indicators of weakly dependent processes | p. 67 |
Low order moments inequalities | p. 69 |
Variances | p. 69 |
A (2 + )-order momentbound | p. 70 |
Combinatorial moment inequalities | p. 73 |
Marcinkiewicz-Zygmundtype inequalities | p. 77 |
Rosenthal type inequalities | p. 79 |
A first exponential inequality | p. 82 |
Cumulants | p. 84 |
General properties of cumulants | p. 84 |
A second exponential inequality | p. 93 |
From weak dependence to the exponential bound | p. 96 |
Tightness criteria | p. 98 |
Tools for causal cases | p. 103 |
Comparison results | p. 103 |
Covariance inequalities | p. 110 |
A covariance inequality for 1 | p. 110 |
A covariance inequality for <$>tilde beta<$> and <$>tilde phi<$> | p. 111 |
Coupling | p. 114 |
A coupling result for real valued random variables | p. 115 |
Coupling in higher dimension | p. 116 |
Exponential and moment inequalities | p. 119 |
Bennett-type inequality | p. 120 |
Burkholder's inequalities | p. 123 |
Rosenthal inequalities using Rio techniques | p. 125 |
Rosenthal inequalities for 1-dependent sequences | p. 130 |
Rosenthal inequalities under projective conditions | p. 131 |
Maximal inequalities | p. 132 |
Applications of SLLN | p. 135 |
Stochastic algorithms with non causal dependent input | p. 135 |
Weakly dependent noise | p. 137 |
1-dependent noise | p. 140 |
Examples of application | p. 142 |
Robbins-Monro algorithm | p. 142 |
Kiefer-Wolfowitz algorithm | p. 143 |
Weighted dependent triangular arrays | p. 143 |
Linear regression | p. 145 |
Central limit theorem | p. 153 |
Non causal case: stationary sequences | p. 153 |
Lindeberg method | p. 155 |
Proof of the main results | p. 158 |
Rates of convergence | p. 161 |
Non causal random fields | p. 163 |
Conditional central limit theorem (causal) | p. 173 |
Definitions and preliminary lemmas | p. 174 |
Invariance of the conditional variance | p. 176 |
End of the proof | p. 178 |
Applications | p. 182 |
Stable convergence | p. 182 |
Sufficient conditions for stationary sequences | p. 184 |
-dependent sequences | p. 189 |
<$>tilde alpha<$> and <$>tilde phi<$>-dependent sequences | p. 192 |
Sufficient conditions for triangular arrays | p. 194 |
Donsker principles | p. 199 |
Non causal stationary sequences | p. 199 |
Non causal random fields | p. 200 |
Moment inequality | p. 201 |
Finite dimensional convergence | p. 202 |
Tightness | p. 205 |
Conditional (causal) invariance principle | p. 205 |
Preliminaries | p. 206 |
Finite dimensional convergence | p. 207 |
Relative compactness | p. 208 |
Applications | p. 209 |
Sufficient conditions for stationary sequences | p. 209 |
Sufficient conditions for triangular arrays | p. 212 |
Law of the iterated logarithm (LIL) | p. 213 |
Bounded LIL under a non causal condition | p. 213 |
Causal strong invariance principle | p. 214 |
The empirical process | p. 223 |
A simple condition for the tightness | p. 224 |
-dependent sequences | p. 225 |
<$>tilde alpha<$>, <$>tilde beta<$> and <$>tilde phi<$>-dependent sequences | p. 231 |
and -dependent sequences | p. 233 |
Empirical copula processes | p. 234 |
Random fields | p. 236 |
Functional estimation | p. 247 |
Some non-parametric problems | p. 247 |
Kernel regression estimates | p. 248 |
Second order and CLT results | p. 249 |
Almost sure convergence properties | p. 252 |
MISE for <$>tilde beta<$>-dependent sequences | p. 254 |
General kernels | p. 260 |
Spectral estimation | p. 265 |
Spectral densities | p. 265 |
Periodogram | p. 269 |
Whittle estimation | p. 274 |
Spectral density estimation | p. 275 |
Second order estimate | p. 277 |
Dependence coefficients | p. 279 |
Econometric applications and resampling | p. 283 |
Econometrics | p. 283 |
Unit root tests | p. 284 |
Parametric problems | p. 285 |
A semi-parametric estimation problem | p. 285 |
Bootstrap | p. 287 |
Block bootstrap | p. 288 |
Bootstrapping GMM estimators | p. 288 |
Conditional bootstrap | p. 290 |
Sieve bootstrap | p. 290 |
Limit variance estimates | p. 292 |
Moments, cumulants and weak dependence | p. 293 |
Estimation of the limit variance | p. 295 |
Law of the large numbers | p. 297 |
Central limit theorem | p. 299 |
A non centered variant | p. 302 |
Bibliography | p. 305 |
Index | p. 317 |
Table of Contents provided by Publisher. All Rights Reserved. |
ISBN: 9780387699516
ISBN-10: 0387699511
Series: LECTURE NOTES IN STATISTICS
Published: 15th August 2007
Format: Paperback
Language: English
Number of Pages: 336
Audience: Professional and Scholarly
Publisher: Springer Nature B.V.
Country of Publication: US
Dimensions (cm): 23.39 x 15.6 x 1.78
Weight (kg): 0.48
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