A concise, easily accessible introduction to descriptive and inferential techniques Statistical Inference: A Short Course offers a concise presentation of the essentials of basic statistics for readers seeking to acquire a working knowledge of statistical concepts, measures, and procedures. Th
Asymptotic Statistical Inference: A Basic Course Using R
β Scribed by Shailaja Deshmukh, Madhuri Kulkarni
- Publisher
- Springer
- Year
- 2021
- Tongue
- English
- Leaves
- 540
- Edition
- 1st ed. 2021
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Numerous illustrative examples of differing difficulty level are incorporated to clarify the concepts. For better assimilation of the notions, various exercises are included in each chapter. Solutions to almost all the exercises are given in the last chapter, to motivate students towards solving these exercises and to enable digestion of the underlying concepts.
The concepts from asymptotic inference are crucial in modern statistics, but are difficult to grasp in view of their abstract nature. To overcome this difficulty, keeping up with the recent trend of using R software for statistical computations, the book uses it extensively, for illustrating the concepts, verifying the properties of estimators and carrying out various test procedures. The last section of the chapters presents R codes to reveal and visually demonstrate the hidden aspects of different concepts and procedures. Augmenting the theory with R software is a novel and a unique feature of the book.
The book is designed primarily to serve as a text book for a one semester introductory course in asymptotic statistical inference, in a post-graduate program, such as Statistics, Bio-statistics or Econometrics. It will also provide sufficient background information for studying inference in stochastic processes. The book will cater to the need of a concise but clear and student-friendly book introducing, conceptually and computationally, basics of asymptotic inference.
β¦ Table of Contents
Preface
Contents
About the Authors
List of Figures
List of Tables
1 Introduction
1.1 Introduction
1.2 Basics of Parametric Inference
1.3 Basics of Asymptotic Inference
1.4 Introduction to R Software and Language
2 Consistency of an Estimator
2.1 Introduction
2.2 Consistency: Real Parameter Setup
2.3 Strong Consistency
2.4 Uniform Weak and Strong Consistency
2.5 Consistency: Vector Parameter Setup
2.6 Performance of a Consistent Estimator
2.7 Verification of Consistency Using R
2.8 Conceptual Exercises
2.9 Computational Exercises
3 Consistent and Asymptotically Normal Estimators
3.1 Introduction
3.2 CAN Estimator: Real Parameter Setup
3.3 CAN Estimator: Vector Parameter Setup
3.4 Verification of CAN Property Using R
3.5 Conceptual Exercises
3.6 Computational Exercises
4 CAN Estimators in Exponential and CramΓ©r Families
4.1 Introduction
4.2 Exponential Family
4.3 CramΓ©r Family
4.4 Iterative Procedures
4.5 Maximum Likelihood Estimation Using R
4.6 Conceptual Exercises
4.7 Computational Exercises
5 Large Sample Test Procedures
5.1 Introduction
5.2 Likelihood Ratio Test Procedure
5.3 Large Sample Tests Using R
5.4 Conceptual Exercises
5.5 Computational Exercises
6 Goodness of Fit Test and Tests for Contingency Tables
6.1 Introduction
6.2 Multinomial Distribution and Associated Tests
6.3 Goodness of Fit Test
6.4 Score Test and Wald's Test
6.5 Tests for Contingency Tables
6.6 Consistency of a Test Procedure
6.7 Large Sample Tests Using R
6.8 Conceptual Exercises
6.9 Computational Exercises
7 Solutions to Conceptual Exercises
7.1 Chapter 2
7.2 Chapter 3
7.3 Chapter 4
7.4 Chapter 5
7.5 Chapter 6
7.6 Multiple Choice Questions
7.6.1 Chapter 2: Consistency of an Estimator
7.6.2 Chapter 3: Consistent and Asymptotically Normal Estimators
7.6.3 Chapter 4: CAN Estimators in Exponential and CramΓ©r Families
7.6.4 Chapter 5: Large Sample Test Procedures
7.6.5 Chapter 6: Goodness of Fit Test and Tests for Contingency Tables
Appendix *-1.6pcIndex
Index
π SIMILAR VOLUMES
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This textbook offers an accessible and comprehensive overview of statistical estimation and inference that reflects current trends in statistical research. It draws from three main themes throughout: the finite-sample theory, the asymptotic theory, and Bayesian statistics. The authors have included
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