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Full Description
Statistical simulation has become a cornerstone in statistical research and applications. The aim of Representative Points of Statistical Distributions: Applications in Statistical Inference is to present a comprehensive exploration of various methods for statistical simulation and resampling, focusing on consistency and efficiency. It covers a range of representative points (RPs) - Monte Carlo (MC) RPs, quasi-Monte Carlo (QMC) RPs, and mean square error (MSE) RPs - and their applications, and includes a collection of recent developments in the field. It also explores other types of representative points and the corresponding approximate distributions, and delves into the realm of statistical simulation by exploring the limitations of traditional MC methods and the innovations brought about by the bootstrap method. In addition, the text introduces other kinds of representative points and the corresponding approximate distributions such as QMC and MSE methods.
Features
Comprehensive exploration of statistical simulation methods: provides a deep dive into MC methods and bootstrap methods, and introduces other kinds of RPs and the corresponding approximate distributions, such as QMC and MSE methods.
Emphasis on consistency and efficiency: highlights the advantages of these methods in terms of consistency and efficiency, addressing the slow convergence rate of classical statistical simulation.
Collection of recent developments: brings together the latest advancements in the field of statistical simulation, keeping readers up to date with the most current research.
Practical applications: includes numerous practical applications of various types of RPs (MC-RPs, QMC-RPs, and MSE-RPs) in statistical inference and simulation.
Educational resource: can serve as a textbook for postgraduate students, a reference book for undergraduate students, and a valuable resource for professionals in various fields.
The book serves as a valuable resource for postgraduate students, researchers, and practitioners in statistics, mathematics, and other quantitative fields.
Contents
1. Statistical Distributions and Preliminary. 2. Approximated Discretization Methods to A Given Continuous Distribution. 3. Property and Generation of MSE-RPs of Univariate Distributions. 4. Statistical Simulation via Distributions formed by RPs. 5. Estimation of MSE-RPs and Resampling. 6. RPs of Multivariate Distributions. 7. Properties of MSE-RPs of Multivariate Distributions. 8. Applications of RPs in Various Fields. 9. Representative Points for Discrete Massive Data.