ورود به حساب

نام کاربری گذرواژه

گذرواژه را فراموش کردید؟ کلیک کنید

حساب کاربری ندارید؟ ساخت حساب

ساخت حساب کاربری

نام نام کاربری ایمیل شماره موبایل گذرواژه

برای ارتباط با ما می توانید از طریق شماره موبایل زیر از طریق تماس و پیامک با ما در ارتباط باشید


09117307688
09117179751

در صورت عدم پاسخ گویی از طریق پیامک با پشتیبان در ارتباط باشید

دسترسی نامحدود

برای کاربرانی که ثبت نام کرده اند

ضمانت بازگشت وجه

درصورت عدم همخوانی توضیحات با کتاب

پشتیبانی

از ساعت 7 صبح تا 10 شب

دانلود کتاب Robust and Multivariate Statistical Methods: Festschrift in Honor of David E. Tyler

دانلود کتاب روشهای آماری قوی و چند متغیره: Festschrift به افتخار دیوید E. تایلر

Robust and Multivariate Statistical Methods: Festschrift in Honor of David E. Tyler

مشخصات کتاب

Robust and Multivariate Statistical Methods: Festschrift in Honor of David E. Tyler

ویرایش: 2023 
نویسندگان:   
سری:  
ISBN (شابک) : 3031226860, 9783031226861 
ناشر: Springer 
سال نشر: 2023 
تعداد صفحات: 500 
زبان: English 
فرمت فایل : PDF (درصورت درخواست کاربر به PDF، EPUB یا AZW3 تبدیل می شود) 
حجم فایل: 13 مگابایت 

قیمت کتاب (تومان) : 71,000



ثبت امتیاز به این کتاب

میانگین امتیاز به این کتاب :
       تعداد امتیاز دهندگان : 1


در صورت تبدیل فایل کتاب Robust and Multivariate Statistical Methods: Festschrift in Honor of David E. Tyler به فرمت های PDF، EPUB، AZW3، MOBI و یا DJVU می توانید به پشتیبان اطلاع دهید تا فایل مورد نظر را تبدیل نمایند.

توجه داشته باشید کتاب روشهای آماری قوی و چند متغیره: Festschrift به افتخار دیوید E. تایلر نسخه زبان اصلی می باشد و کتاب ترجمه شده به فارسی نمی باشد. وبسایت اینترنشنال لایبرری ارائه دهنده کتاب های زبان اصلی می باشد و هیچ گونه کتاب ترجمه شده یا نوشته شده به فارسی را ارائه نمی دهد.


توضیحاتی درمورد کتاب به خارجی



فهرست مطالب

Foreword
Preface
Acknowledgements
Contents
List of Contributors
Part I About David E. Tyler\'s Publications
An Analysis of David E. Tyler\'s Publication and Coauthor Network
	1 Introduction
	2 David Tyler\'s Coauthor Network
	3 David Tyler\'s Influence
	4 Concluding Remarks
	Appendices
		A.1 Publications of David E Tyler
		A.2 R Packages of David E Tyler
	References
A Review of Tyler\'s Shape Matrix and Its Extensions
	1 Introduction
	2 Definition and Statistical Properties
	3 Extensions
		3.1 Joint Estimation of Location and Tyler\'s Shape Matrix: The Hettmansperger–Randles Estimators
		3.2 The Symmetrized Variant of Tyler\'s Shape Matrix: Dümbgen\'s Estimator
		3.3 Estimation Under Missing Data
		3.4 Structured Tyler\'s Shape Estimation
		3.5 Regularized Estimators
	4 Discussion
	References
Part II Multivariate Theory and Methods
On the Asymptotic Behavior of the Leading Eigenvector of Tyler\'s Shape Estimator Under Weak Identifiability
	1 Introduction
	2 Tyler\'s Estimator of Shape Under Weak Identifiability
	3 Asymptotic Behavior of Tyler\'s Leading Eigenvector Under Weak Identifiability
	4 Numerical Illustration
	Appendix
	References
On Minimax Shrinkage Estimation with Variable Selection
	1 Introduction
	2 Results for the Normal Case, Known Scale
	3 Scale Mixtures of Normal Distributions
	4 Spherically Symmetric Distributions with Residual
	5 A Simulation Study
	6 Summary and Conclusion
	References
On the Finite-Sample Performance of Measure-Transportation-Based Multivariate Rank Tests
	1 Introduction
		1.1 David Tyler, Beyond Affine Equivariance and Elliptical Symmetry
		1.2 Ordering the Real Space in Dimension d≥2
	2 Center-Outward Ranks and Signs
		2.1 Measure Transportation-Based Concepts of Distribution and Quantile Functions
		2.2 Multivariate Ranks and Signs
		2.3 Distribution-Free Tests Based on Center-Outward Ranks and Signs
			2.3.1 Score Functions
			2.3.2 Test Statistics
	3 Finite-Sample Performance: Two-Sample Location Simulations
		3.1 Halton Sequences on the Cube and the Sphere ((Gii) and (Giv) Grids)
		3.2 Factorization of n ((Gi) and (Giii) Grids)
		3.3 Simulations
	4 Wilcoxon-Type Tests
		4.1 The Bivariate Case
			4.1.1 Spherical Gaussian Samples
			4.1.2 Nonspherical Gaussian Samples
			4.1.3 Samples with Independent Cauchy Marginals
			4.1.4 Spherical Cauchy Samples
			4.1.5 ``Banana-Shaped\'\' Samples
		4.2 Wilcoxon-Type Statistics in Dimension d=5
			4.2.1 Spherical Gaussian Samples
			4.2.2 Nonspherical Gaussian Samples
			4.2.3 Samples with Independent Cauchy Marginals
		4.3 Wilcoxon-Type Statistics in Dimension d=30
			4.3.1 Spherical Gaussian Samples
			4.3.2 Nonspherical Gaussian Samples
			4.3.3 Samples with Independent Cauchy Marginals
		4.4 Wilcoxon-Type Statistics in Dimension d=100
			4.4.1 Spherical Gaussian Samples
			4.4.2 Nonspherical Gaussian Samples
			4.4.3 Samples with Independent Cauchy Marginals
	5 van der Waerden-Type Tests
		5.1 Bivariate Case
			5.1.1 Spherical Gaussian Samples
			5.1.2 Nonspherical Gaussian Samples
			5.1.3 Samples with Independent Cauchy Marginals
			5.1.4 Spherical Cauchy Samples
			5.1.5 ``Banana-Shaped\'\' Samples
		5.2 van der Waerden-Type Statistics in Dimension d=5
			5.2.1 Spherical Gaussian Samples
			5.2.2 Nonspherical Gaussian Samples
			5.2.3 Samples with Independent Cauchy Marginals
		5.3 van der Waerden-Type Statistics in Dimension d=30
			5.3.1 Spherical Gaussian Samples
			5.3.2 Nonspherical Gaussian Samples
			5.3.3 Samples with Independent Cauchy Marginals
		5.4 van der Waerden-Type Statistics in Dimension d=100
			5.4.1 Spherical Gaussian Samples
			5.4.2 Nonspherical Gaussian Samples
			5.4.3 Samples with Independent Cauchy Marginals
	6 Conclusions
	References
Refining Invariant Coordinate Selection via Local Projection Pursuit
	1 Projection Pursuit
	2 Invariant Coordinate Selection as a Starting Point
	3 Estimation of Entropy
	4 Local Optimization
	5 The Complete Procedure(s)
	6 Numerical Examples
	References
Directional Distributions and the Half-Angle Principle
	1 Introduction
	2 Basic Operations on the Circle
	3 Transformations of Distributions on the Circle
	4 Basic Operations on the Sphere
	5 Projections from the Sphere to Euclidean Space
	6 The ACG Distribution on the Sphere
		6.1 Review of Quadratic Forms in the Multivariate Normal Distribution
		6.2 Basic Properties of the ACG Distribution
		6.3 ACG Distribution Under Gnomonic Projection
	7 The Spherical Cauchy Distribution
	8 Transformation Groups on the Sphere
	9 Parameterizations and Motivations for the Wrapped Cauchy Distribution on S1
	References
Part III Robust Theory and Methods
Power M-Estimators for Location and Scatter
	1 Motivation
	2 Prerequisites
	3 Power M-Estimators for Location and Scatter
		3.1 ML-Estimation
		3.2 M-Estimation
		3.3 Main Result
	4 Asymptotic Distributions
		4.1 Theoretical Results
		4.2 A Simple Application
	5 Proofs
	References
On Robust Estimators of a Sphericity Measure in High Dimension
	1 Introduction
	2 On the Role of Sphericity on the Accuracy of SCM in High Dimension
	3 Sphericity Estimator Based on the Sample Covariance Matrix
	4 Sphericity Estimator Based on the Spatial Sign Covariance Matrix
	5 Sphericity Estimators Based on M-Estimators of Scatter
	6 Simulation Studies
	7 Conclusions
	References
Detecting Outliers in Compositional Data Using Invariant Coordinate Selection
	1 Introduction
	2 Reminder About ICS and Outlier Detection
		2.1 Scatter Matrices
		2.2 ICS Principle
		2.3 ICS for Outlier Detection
	3 Reminder About Compositional Data Analysis
	4 Multivariate Tools for Compositional Data
		4.1 Algebra of Endomorphisms of the Simplex and Eigendecomposition
		4.2 One-Step M-Scatter Functionals of a Compositional Random Vector
		4.3 Elliptical Distribution in the Simplex
	5 ICS for Compositional Data
		5.1 ICS in Coordinate Space
		5.2 ICS in the Simplex
		5.3 Reconstruction Formula
	6 Examples of Application
		6.1 Toy Examples
		6.2 Market Shares Example
	7 Conclusion
	Appendix
	References
Robust Forecasting of Multiple Time Series with One-Sided Dynamic Principal Components
	1 Introduction
	2 One-Sided Dynamic Principal Components
	3 Robust One-Sided Dynamic Principal Components
	4 Computing Algorithm for the S-ODPC
	5 Forecasting Using the S-ODPC
	6 Selecting the Number of Lags and the Number of Components
		6.1 Selection Using an Information Criterion
		6.2 Selection Using Robust Cross-validation
	7 Asymptotic Behavior of the S-ODPC in Factor Models
	8 Simulation Results
	9 Example with a Real Data Set
	10 Conclusions
	Appendix
		Derivation of the Estimating Equations
		Proof of Theorem 1
	References
Robust and Sparse Estimation of Graphical Models Based on Multivariate Winsorization
	1 Introduction
	2 Outliers in High-Dimensional Data
	3 Robust Lasso for Precision Matrices
		3.1 Plug-in Strategy
		3.2 Adjusted Multivariate Winsorization
	4 Simulation Experiment and Numerical Results
		4.1 Simulation Settings
			Precision Matrix Models
			Contamination Scenarios
			Precision Matrix Estimators
			Estimation Performance Evaluation
		4.2 Estimation and Graph Recovery Performances
		4.3 Timing Comparisons
	5 Real Data Example
	6 Concluding Remarks
	References
Robustly Fitting Gaussian Graphical Models—the R Package robFitConGraph
	1 Introduction
		1.1 Gaussian Graphical Modeling
		1.2 Robustness
	2 A Case Study: Music Performance Anxiety
		2.1 Inferential Analysis: MPA and Social Anxiety
		2.2 Explorative Analysis
		2.3 The Classical Analysis
	3 Background and Theory
		3.1 The Constant σ1
		3.2 The Direct vs. the Plug-in Estimate
		3.3 Ellipticity vs. Normality
	Technical Appendix
	References
Robust Estimation of General Linear Mixed Effects Models
	1 Introduction
	2 The Model and Classical Estimation
	3 The Robust Scoring Equations Estimator
		3.1 Estimation for Diagonal Vb
		3.2 Estimation for Block Diagonal Vb
		3.3 Computation
		3.4 Choices of ψ and w
		3.5 Robust Tests
	4 Properties of the Robust Scoring Equations Estimator
		4.1 Sensitivity Curves
		4.2 Efficiency and Robustness, Diagonal Case
		4.3 Coverage Probabilities, Diagonal Case
		4.4 Efficiency and Robustness, Block-Diagonal Case
	5 Examples
		5.1 Penicillin Data
		5.2 Sleep Study
	6 Conclusions
	Appendix
		Linear Approximation of Estimated Quantities
		Covariance Matrices
		Refined Design Adaptive Scale
	References
Asymptotic Behaviour of Penalized Robust Estimators in Logistic Regression When Dimension Increases
	1 Introduction
	2 Preliminaries: Robust Penalized Estimators
		2.1 Assumptions
	3 Consistency and Rates of Convergence
	4 Variable Selection and Asymptotic Distribution
	5 General Comments
	Appendix 1: Proofs of Remark 4 and of the Results in Sect.3
	Appendix 2: Proof of Theorem 4
	References
Conditional Distribution-Based Downweighting for Robust Estimation of Logistic Regression Models
	1 Introduction
	2 M-Estimators for Logistic Regression
		2.1 A New Perspective to Outlier Downweighting
	3 Modified Mallows Class Approach
	4 Numerical Study
		4.1 Simulation Settings
		4.2 Simulation Results
		4.3 Leukemia Dataset
	5 Discussion
	References
Bias Calibration for Robust Estimation in Small Areas
	1 Introduction
	2 General Framework and Notation
	3 Bias Calibration for Non-linear Parameter Estimates
		3.1 Linearization by the Influence Function
	4 Model-based Simulation Study
	5 Some Practical Issues
		5.1 Full Calibration vs. Partial Calibration
		5.2 Choice of the Tuning Parameters
	6 Estimating the Gini Coefficient for Labor Market Areas in Tuscany
		6.1 Results for LMAs in Sample Areas with Partial Calibration
		6.2 Results for All Areas with Full Calibration
	7 Conclusions and Further Discussion
	Appendix
		Influence Function of the Gini Coefficient
		Bootstrap for RMSE and Tuning Parameter Selection
		Details on the Estimator for Tuning Parameters
	References
The Diverging Definition of Robustness in Statistics and Computer Vision
	1 Collaborations
	2 Statistics vs. Computer Vision
	3 RANSAC
	4 MISRE
	5 Possible Cooperation
	References
Part IV Other Methods
Power Calculations and Critical Values for Two-Stage Nonparametric Testing Regimes
	1 Introduction
	2 Assumptions
	3 Existing Probability Calculations
	4 Approximating Corner Probabilities
	5 Existing Approximate Critical Values
	6 A New Bivariate Quantile Approximation
	7 Application to Rank Tests
	8 Continuity Correction for the Two-Stage Wilcoxon Statistic
	9 Sample Size Calculation
	10 An Example Calculation
	11 Results
	12 Errors in Levels for Approximate Critical Values
	13 Errors in Approximations to Power
	14 Conclusions
	Appendix 1: A Bivariate Recursion for Exact Probabilities
	Appendix 2: A Continuous Example with Nonzero Skewness
	References
Data Nuggets in Supervised Learning
	1 Introduction
		1.1 Literature Overview
		1.2 Data Nuggets
	2 Setup
		2.1 Formation of Nuggets
		2.2 Estimation with Nuggets
	3 Asymptotics
		3.1 Intuition
		3.2 Consistency of Coefficient Estimator
		3.3 Consistency of Variance Estimator
		3.4 Asymptotic Normality of Coefficient Estimator
	4 Example
	5 Simulations
		5.1 First Simulation Set: Prediction
		5.2 Second Simulation Set: Estimation
	6 Extensions
	7 Discussion
	8 Conclusion
	References
Improved Convergence Rates of Normal Extremes
	1 Introduction
	2 Main Results
		2.1 Pointwise Convergence Rates
		2.2 Uniform Convergence Rate
		2.3 Comparisons of Different Convergence Rates
		2.4 k-th Maxima
	3 Applications and Numerical Comparisons
		3.1 Numerical Comparisons
		3.2 An Example
	4 Conclusion
	Appendix
		Expansion of bn
		Additional Figures
	References
Local Spectral Analysis of Qualitative Sequences via Minimum Description Length
	1 Introduction
	2 Spectral Envelope
		2.1 Estimation
		2.2 An Example
	3 Local Analysis
		3.1 Local Whittle Likelihood
		3.2 Minimum Description Length
		3.3 Optimization via Genetic Algorithm
		3.4 Another Example
	Data Availability
	References




نظرات کاربران