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The jackknife and bootstrap are the most popular data-resampling meth- ods used in statistical analysis. The resampling methods replace theoreti- cal derivations required in applying trad… Altro …

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1995, ISBN: 0387945156

Hardcover XVII, 516 p. Gebundene Ausgabe Ehem. Bibliotheksexemplar mit üblichen Merkmalen wie Signatur und Stempel. Moderate Lager- und Gebrauchsspuren. Sprache: englisch. Ex library boo… Altro …

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The jackknife and bootstrap. Springer series in statistics - Shao, Jun und Dongsheng Tu,
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Shao, Jun und Dongsheng Tu,:
The jackknife and bootstrap. Springer series in statistics - copertina rigida, flessible

1995

ISBN: 0387945156

Hardcover XVII, 516 p. Gebundene Ausgabe Ehem. Bibliotheksexemplar mit üblichen Merkmalen wie Signatur und Stempel. Moderate Lager- und Gebrauchsspuren. Sprache: englisch. Ex library boo… Altro …

Costi di spedizione:Versandkostenfrei innerhalb der BRD. (EUR 0.00) Antiquariat Bookfarm Sebastian Seckfort, 04509 Löbnitz
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The jackknife and bootstrap. Springer series in statistics - Shao, Jun und Dongsheng Tu,
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Shao, Jun und Dongsheng Tu,:
The jackknife and bootstrap. Springer series in statistics - copertina rigida, flessible

1995, ISBN: 0387945156

Hardcover XVII, 516 p. Gebundene Ausgabe Ehem. Bibliotheksexemplar mit üblichen Merkmalen wie Signatur und Stempel. Moderate Lager- und Gebrauchsspuren. Sprache: englisch. Ex library boo… Altro …

Costi di spedizione:Versandkostenfrei innerhalb der BRD. (EUR 0.00) Antiquariat Bookfarm Sebastian Seckfort, 04177 Leipzig
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The Jackknife and Bootstrap - copertina rigida, flessible

1996, ISBN: 0387945156

1st ed. 1995. Corr. 2nd printing 1996 Gebundene Ausgabe Bootstrapping; Covariancematrix; Estimator; FactorAnalysis; GeneralizedlinearModel; Likelihood; MonteCarlomethod; Resampling; STA… Altro …

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Dettagli del libro
The Jackknife and Bootstrap Jun Shao Author

The Jackknife and bootstrap are the most popular data-resampling methods used in statistical analysis. This book provides a systematic introduction to the theory of the jackknife, bootstrap and other resampling methods that have been developed in the last twenty years. It aims to provide a guide to using these methods which will enable applied statisticians to feel comfortable in applying them to data in their own research. The authors have included examples of applying these methods in various applications in both the independent and identically distributed (iid) case and in more complicated cases with non-iid data sets. Readers are assumed to have a reasonable knowledge of mathematical statistics and so this will be made suitable reading for graduate students, researchers and practitioners seeking a wide-ranging survey of this important area of statistical theory and application.

Informazioni dettagliate del libro - The Jackknife and Bootstrap Jun Shao Author


EAN (ISBN-13): 9780387945156
ISBN (ISBN-10): 0387945156
Copertina rigida
Anno di pubblicazione: 1996
Editore: Springer New York Core >2 >T
540 Pagine
Peso: 0,964 kg
Lingua: eng/Englisch

Libro nella banca dati dal 2007-06-04T01:39:09+02:00 (Zurich)
Pagina di dettaglio ultima modifica in 2023-04-26T07:54:05+02:00 (Zurich)
ISBN/EAN: 0387945156

ISBN - Stili di scrittura alternativi:
0-387-94515-6, 978-0-387-94515-6
Stili di scrittura alternativi e concetti di ricerca simili:
Autore del libro : krickeberg, jun, shao
Titolo del libro: springer series, sinica, the jackknife and bootstrap, statistics, bootstrap example


Dati dell'editore

Autore: Jun Shao; Dongsheng Tu
Titolo: Springer Series in Statistics; The Jackknife and Bootstrap
Editore: Springer; Springer US
517 Pagine
Anno di pubblicazione: 1995-07-21
New York; NY; US
Peso: 2,050 kg
Lingua: Inglese
320,99 € (DE)
329,99 € (AT)
354,00 CHF (CH)
POD
XVII, 517 p.

BB; Applications of Mathematics; Hardcover, Softcover / Mathematik/Sonstiges; Angewandte Mathematik; Verstehen; Bootstrapping; Covariance matrix; Estimator; Factor analysis; Generalized linear model; Likelihood; Monte Carlo method; Resampling; STATISTICA; Time series; Uniform integrability; Variance; linear regression; mathematical statistics; statistics; Applications of Mathematics; BC; EA

1. Introduction.- 1.1 Statistics and Their Sampling Distributions.- 1.2 The Traditional Approach.- 1.3 The Jackknife.- 1.4 The Bootstrap.- 1.5 Extensions to Complex Problems.- 1.6 Scope of Our Studies.- 2. Theory for the Jackknife.- 2.1 Variance Estimation for Functions of Means.- 2.1.1 Consistency.- 2.1.2 Other properties.- 2.1.3 Discussions and examples.- 2.2 Variance Estimation for Functionals.- 2.2.1 Differentiability and consistency.- 2.2.2 Examples.- 2.2.3 Convergence rate.- 2.2.4 Other differential approaches.- 2.3 The Delete-d Jackknife.- 2.3.1 Variance estimation.- 2.3.2 Jackknife histograms.- 2.4 Other Applications.- 2.4.1 Bias estimation.- 2.4.2 Bias reduction.- 2.4.3 Miscellaneous results.- 2.5 Conclusions and Discussions.- 3. Theory for the Bootstrap.- 3.1 Techniques in Proving Consistency.- 3.1.1 Bootstrap distribution estimators.- 3.1.2 Mallows’ distance.- 3.1.3 Berry-Esséen’s inequality.- 3.1.4 Imitation.- 3.1.5 Linearization.- 3.1.6 Convergence in moments.- 3.2 Consistency: Some Major Results.- 3.2.1 Distribution estimators.- 3.2.2 Variance estimators.- 3.3 Accuracy and Asymptotic Comparisons.- 3.3.1 Convergence rate.- 3.3.2 Asymptotic minimaxity.- 3.3.3 Asymptotic mean squared error.- 3.3.4 Asymptotic relative error.- 3.3.5 Conclusions.- 3.4 Fixed Sample Performance.- 3.4.1 Moment estimators.- 3.4.2 Distribution estimators.- 3.4.3 Conclusions.- 3.5 Smoothed Bootstrap.- 3.5.1 Empirical evidences and examples.- 3.5.2 Sample quantiles.- 3.5.3 Remarks.- 3.6 Nonregular Cases.- 3.7 Conclusions and Discussions.- 4. Bootstrap Confidence Sets and Hypothesis Tests.- 4.1 Bootstrap Confidence Sets.- 4.1.1 The bootstrap-t.- 4.1.2 The bootstrap percentile.- 4.1.3 The bootstrap bias-corrected percentile.- 4.1.4 The bootstrap accelerated bias-corrected percentile.- 4.1.5 The hybrid bootstrap.- 4.2 Asymptotic Theory.- 4.2.1 Consistency.- 4.2.2 Accuracy.- 4.2.3 Other asymptotic comparisons.- 4.3 The Iterative Bootstrap and Other Methods.- 4.3.1 The iterative bootstrap.- 4.3.2 Bootstrap calibrating.- 4.3.3 The automatic percentile and variance stabilizing.- 4.3.4 Fixed width bootstrap confidence intervals.- 4.3.5 Likelihood based bootstrap confidence sets.- 4.4 Empirical Comparisons.- 4.4.1 The bootstrap-t, percentile, BC, and BCa.- 4.4.2 The bootstrap and other asymptotic methods.- 4.4.3 The iterative bootstrap and bootstrap calibration.- 4.4.4 Summary.- 4.5 Bootstrap Hypothesis Tests.- 4.5.1 General description.- 4.5.2 Two-sided hypotheses with nuisance parameters.- 4.5.3 Bootstrap distance tests.- 4.5.4 Other results and discussions.- 4.6 Conclusions and Discussions.- 5. Computational Methods.- 5.1 The Delete-1 Jackknife.- 5.1.1 The one-step jackknife.- 5.1.2 Grouping and random subsampling.- 5.2 The Delete-d Jackknife.- 5.2.1 Balanced subsampling.- 5.2.2 Random subsampling.- 5.3 Analytic Approaches for the Bootstrap.- 5.3.1 The delta method.- 5.3.2 Jackknife approximations.- 5.3.3 Saddle point approximations.- 5.3.4 Remarks.- 5.4 Simulation Approaches for the Bootstrap.- 5.4.1 The simple Monte Carlo method.- 5.4.2 Balanced bootstrap resampling.- 5.4.3 Centering after Monte Carlo.- 5.4.4 The linear bootstrap.- 5.4.5 Antithetic bootstrap resampling.- 5.4.6 Importance bootstrap resampling.- 5.4.7 The one-step bootstrap.- 5.5 Conclusions and Discussions.- 6. Applications to Sample Surveys.- 6.1 Sampling Designs and Estimates.- 6.2 Resampling Methods.- 6.2.1 The jackknife.- 6.2.2 The balanced repeated replication.- 6.2.3 Approximated BRR methods.- 6.2.4 The bootstrap.- 6.3 Comparisons by Simulation.- 6.4 Asymptotic Results.- 6.4.1 Assumptions.- 6.4.2 The jackknife and BRR for functions of averages.- 6.4.3 The RGBRR and RSBRR for functions of averages.- 6.4.4 The bootstrap for functions of averages.- 6.4.5 The BRR and bootstrap for sample quantiles.- 6.5 Resampling Under Imputation.- 6.5.1 Hot deck imputation.- 6.5.2 An adjusted jackknife.- 6.5.3 Multiple bootstrap hot deck imputation.- 6.5.4 Bootstrapping under imputation.- 6.6 Conclusions and Discussions.- 7. Applications to Linear Models.- 7.1 Linear Models and Regression Estimates.- 7.2 Variance and Bias Estimation.- 7.2.1 Weighted and unweighted jackknives.- 7.2.2 Three types of bootstraps.- 7.2.3 Robustness and efficiency.- 7.3 Inference and Prediction Using the Bootstrap.- 7.3.1 Confidence sets.- 7.3.2 Simultaneous confidence intervals.- 7.3.3 Hypothesis tests.- 7.3.4 Prediction.- 7.4 Model Selection.- 7.4.1 Cross-validation.- 7.4.2 The bootstrap.- 7.5 Asymptotic Theory.- 7.5.1 Variance estimators.- 7.5.2 Bias estimators.- 7.5.3 Bootstrap distribution estimators.- 7.5.4 Inference and prediction.- 7.5.5 Model selection.- 7.6 Conclusions and Discussions.- 8. Applications to Nonlinear, Nonparametric, and Multivariate Models.- 8.1 Nonlinear Regression.- 8.1.1 Jackknife variance estimators.- 8.1.2 Bootstrap distributions and confidence sets.- 8.1.3 Cross-validation for model selection.- 8.2 Generalized Linear Models.- 8.2.1 Jackknife variance estimators.- 8.2.2 Bootstrap procedures.- 8.2.3 Model selection by bootstrapping.- 8.3 Cox’s Regression Models.- 8.3.1 Jackknife variance estimators.- 8.3.2 Bootstrap procedures.- 8.4 Kernel Density Estimation.- 8.4.1 Bandwidth selection by cross-validation.- 8.4.2 Bandwidth selection by bootstrapping.- 8.4.3 Bootstrap confidence sets.- 8.5 Nonparametric Regression.- 8.5.1 Kernel estimates for fixed design.- 8.5.2 Kernel estimates for random regressor.- 8.5.3 Nearest neighbor estimates.- 8.5.4 Smoothing splines.- 8.6 Multivariate Analysis.- 8.6.1 Analysis of covariance matrix.- 8.6.2 Multivariate linear models.- 8.6.3 Discriminant analysis.- 8.6.4 Factor analysis and clustering.- 8.7 Conclusions and Discussions.- 9. Applications to Time Series and Other Dependent Data.- 9.1 m-Dependent Data.- 9.2 Markov Chains.- 9.3 Autoregressive Time Series.- 9.3.1 Bootstrapping residuals.- 9.3.2 Model selection.- 9.4 Other Time Series.- 9.4.1 ARMA(p,q) models.- 9.4.2 Linear regression with time series errors.- 9.4.3 Dynamical linear regression.- 9.5 Stationary Processes.- 9.5.1 Moving block and circular block.- 9.5.2 Consistency of the bootstrap.- 9.5.3 Accuracy of the bootstrap.- 9.5.4 Remarks.- 9.6 Conclusions and Discussions.- 10. Bayesian Bootstrap and Random Weighting.- 10.1 Bayesian Bootstrap.- 10.1.1 Bayesian bootstrap with a noninformative prior.- 10.1.2 Bayesian bootstrap using prior information.- 10.1.3 The weighted likelihood bootstrap.- 10.1.4 Some remarks.- 10.2 Random Weighting.- 10.2.1 Motivation.- 10.2.2 Consistency.- 10.2.3 Asymptotic accuracy.- 10.3 Random Weighting for Functional and Linear Models.- 10.3.1 Statistical functionals.- 10.3.2 Linear models.- 10.4 Empirical Results for Random Weighting.- 10.5 Conclusions and Discussions.- Appendix A. Asymptotic Results.- A.1 Modes of Convergence.- A.2 Convergence of Transformations.- A.4 The Borel-Cantelli Lemma.- A.5 The Law of Large Numbers.- A.6 The Law of the Iterated Logarithm.- A.7 Uniform Integrability.- A.8 The Central Limit Theorem.- A.9 The Berry-Esséen Theorem.- A.10 Edgeworth Expansions.- A.11 Cornish-Fisher Expansions.- Appendix B. Notation.- References.- Author Index.

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