Hubert / Van Aelst / Pison | Theory and Applications of Recent Robust Methods | Buch | 978-3-0348-9636-8 | sack.de

Buch, Englisch, 400 Seiten, Paperback, Format (B × H): 178 mm x 254 mm, Gewicht: 779 g

Reihe: Statistics for Industry and Technology

Hubert / Van Aelst / Pison

Theory and Applications of Recent Robust Methods


Softcover Nachdruck of the original 1. Auflage 2004
ISBN: 978-3-0348-9636-8
Verlag: Birkhäuser Basel

Buch, Englisch, 400 Seiten, Paperback, Format (B × H): 178 mm x 254 mm, Gewicht: 779 g

Reihe: Statistics for Industry and Technology

ISBN: 978-3-0348-9636-8
Verlag: Birkhäuser Basel


Intended for both researchers and practitioners, this book will be a valuable resource for studying and applying recent robust statistical methods. It contains up-to-date research results in the theory of robust statistics

Treats computational aspects and algorithms and shows interesting and new applications.

Hubert / Van Aelst / Pison Theory and Applications of Recent Robust Methods jetzt bestellen!

Zielgruppe


Research

Weitere Infos & Material


Bias Behavior of the Minimum Volume Ellipsoid Estimate.- A Study of Belgian Inflation, Relative Prices and Nominal Rigidities using New Robust Measures of Skewness and Tail Weight.- Robust Strategies for Quantitative Investment Management.- An Adaptive Algorithm for Quantile Regression.- On Properties of Support Vector Machines for Pattern Recognition in Finite Samples.- Smoothed Local L-Estimation With an Application.- Fast Algorithms for Computing High Breakdown Covariance Matrices with Missing Data.- Generalized d-fullness Technique for Breakdown Point Study of the Trimmed Likelihood Estimator with Application.- On Robustness to Outliers of Parametric L2 Estimate Criterion in the Case of Bivariate Normal Mixtures: a Simulation Study.- Robust PCR and Robust PLSR: a Comparative Study.- Analytic Estimator Densities for Common Parameters under Misspecified Models.- Empirical Comparison of the Classification Performance of Robust Linear and Quadratic Discriminant Analysis.- Estimates of the Tail Index Based on Nonparametric Tests.- On Mardia’s Tests of Multinormality.- Robustness in Sequential Discrimination of Markov Chains under “Contamination”.- Robust Box-Cox Transformations for Simple Regression.- Consistency of the Least Weighted Squares Regression Estimator.- Algorithms for Robust Model Selection in Linear Regression.- Analyzing the Number of Samples Required for an Approximate Monte-Carlo LMS Line Estimator.- Visualizing 1D Regression.- Robust Redundancy Analysis by Alternating Regression.- Robust ML-estimation of the Transmitter Location.- A Family of Scale Estimators by Means of Trimming.- Robust Efficient Method of Moments Estimation.- Computational Geometry and Statistical Depth Measures.- Partial Mixture Estimation and Outlier Detection in Data andRegression.- Robust Fitting Using Mean Shift: Applications in Computer Vision.- Testing the Equality of Location Parameters for Skewed Distributions Using S1 with High Breakdown Robust Scale Estimators.- Rank Scores Tests of Multivariate Independence.- The Influence of a Stochastic Interest Rate on the n-fold Compound Option.- Robust Estimations for Multivariate Sinh-1-Normal Distribution.- A Robust Estimator of the Tail Index Based on an Exponential Regression Model.- Robust Processing of Mechanical Vibration Measurements.- Quadratic Mixed Integer Programming Models in Minimax Robust Regression Estimators.



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