Fr. 157.20

Frontiers in Statistics

English · Paperback / Softback

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Klappentext During the last two decades, many areas of statistical inference have experienced phenomenal growth. This book presents a timely analysis and overview of some of these new developments and a contemporary outlook on the various frontiers of statistics. Eminent leaders in the field have contributed 16 review articles and 6 research articles covering areas including semi-parametric models, data analytical nonparametric methods, statistical learning, network tomography, longitudinal data analysis, financial econometrics, time series, bootstrap and other re-sampling methodologies, statistical computing, generalized nonlinear regression and mixed effects models, martingale transform tests for model diagnostics, robust multivariate analysis, single index models and wavelets. This volume is dedicated to Prof. Peter J Bickel in honor of his 65th birthday. The first article of this volume summarizes some of Prof. Bickel's distinguished contributions. Zusammenfassung Presents an analysis and overview of some of the developments in the various frontiers of statistics. This book includes articles covering areas including semi-parametric models! data analytical nonparametric methods! statistical learning! network tomography! longitudinal data analysis! financial econometrics! statistical computing! and more. Inhaltsverzeichnis Our Steps on the Bickel Way (K Doksum & Y Ritov); Semiparametric Models: A Review of Progress since BKRW (1993) (J A Wellner et al.); Efficient Estimator for Time Series (A Schick & W Wefelmeyer); On the Efficiency of Estimation for a Single-Index Model (Y Xia & H Tong); Estimating Function Based Cross-Validation (M J Van der Laan & D Rubin); Powerful Choices: Tuning Parameter Selection Based on Power (K Doksum & C Schafer); Nonparametric Assessment of Atypicality (P Hall & J W Kay); Selective Review on Wavelets in Statistics (Y Wang); Model Diagnostics via Martingale Transforms: A Brief Review (H L Koul); Boosting Algorithms: With an Application to Bootstrapping Multivariate Time Series (P Buhlmann & R W Lutz); Bootstrap Methods: A Review (S N Lahiri); An Expansion for a Discrete Non-Lattice Distribution (F Gotze & W R van Zwet); An Overview on Nonparametric and Semiparametric Techniques for Longitudinal Data (J Fan & R Li); Regressing Longitudinal Response Trajectories on a Covariate (H-G Muller & F Yao); Statistical Physics and Statistical Computing: A Critical Link (J D Servidea & X-L Meng); Network Tomography: A Review and Recent Developments (E Lawrence et al.); Likelihood Inference for Diffusions: A Survey (Y Ait-Sahalia); Nonparametric Estimation of Production Efficiency (B U Park et al.); Convergence and Consistency of Newton's Algorithm for Estimating Mixing Distribution (J K Ghosh & S T Tokdar); Mixed Models: An Overview (J Jiang & Z Ge); Robust Location and Scatter Estimators in Multivariate Analysis (Y Zuo); Estimation of the Loss of an Estimate (W H Wong). ...

Product details

Authors Jianqing (Princeton Univ Fan, Jianqing Koul Fan, FAN JIANQING KOUL HIRA L
Assisted by Jianqing Fan (Editor), Jianqing (Princeton Univ Fan (Editor), Hira L Koul (Editor), Hira L (Michigan State Univ Koul (Editor), Hira L. Koul (Editor)
Publisher Imperial College Press
 
Languages English
Product format Paperback / Softback
Released 18.07.2006
 
EAN 9781860946981
ISBN 978-1-86094-698-1
No. of pages 552
Subjects Natural sciences, medicine, IT, technology > Mathematics > Probability theory, stochastic theory, mathematical statistics
Social sciences, law, business > Business > Economics

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