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Marginal and Functional Quantization of Stochastic Processes / by Harald Luschgy, Gilles Pagès
(Probability Theory and Stochastic Modelling. ISSN:21993149 ; 105)

1st ed. 2023.
出版者 (Cham : Springer Nature Switzerland : Imprint: Springer)
出版年 2023
本文言語 英語
大きさ XVIII, 912 p. 39 illus., 25 illus. in color : online resource
著者標目 *Luschgy, Harald author
Pagès, Gilles author
SpringerLink (Online service)
件 名 LCSH:Probabilities
LCSH:Telecommunication
LCSH:Mathematics -- Data processing  全ての件名で検索
FREE:Probability Theory
FREE:Communications Engineering, Networks
FREE:Computational Mathematics and Numerical Analysis
一般注記 Preface -- Notation Index -- Part I. Basics and Marginal Quantization -- 1. Optimal and Stationary Quantizers -- 2. The Finite-Dimensional Setting I -- 3. The Finite-Dimensional Setting II -- Part II. Functional Quantization -- 4. Functional Quantization, Small Ball Probabilities, Metric Entropy and Series Expansions for Gaussian Processes -- 5. Spectral Methods for Gaussian Processes -- 6. Geometry of Optimal and Rate-Optimal Quantizers for Gaussian Processes -- 7. Mean Regular Processes -- Part III. Algorithmic Aspects and Applications:- 8. Optimal Quantization from the Numerical Side (Static) -- 9. Applications: Quantization-Based Cubature Formulas -- 10. Quantization-Based Numerical Schemes -- Appendices -- A. Radon Random Vectors, Stochastic Processes and Inequalities -- B. Miscellany -- References -- Index
Vector Quantization, a pioneering discretization method based on nearest neighbor search, emerged in the 1950s primarily in signal processing, electrical engineering, and information theory. Later in the 1960s, it evolved into an automatic classification technique for generating prototypes of extensive datasets. In modern terms, it can be recognized as a seminal contribution to unsupervised learning through the k-means clustering algorithm in data science. In contrast, Functional Quantization, a more recent area of study dating back to the early 2000s, focuses on the quantization of continuous-time stochastic processes viewed as random vectors in Banach function spaces. This book distinguishes itself by delving into the quantization of random vectors with values in a Banach space—a unique feature of its content. Its main objectives are twofold: first, to offer a comprehensive and cohesive overview of the latest developments as well as several new results in optimal quantization theory, spanning both finite and infinite dimensions, building upon the advancements detailed in Graf and Luschgy's Lecture Notes volume. Secondly, it serves to demonstrate how optimal quantization can be employed as a space discretization method within probability theory and numerical probability, particularly in fields like quantitative finance. The main applications to numerical probability are the controlled approximation of regular and conditional expectations by quantization-based cubature formulas, with applications to time-space discretization of Markov processes, typically Brownian diffusions, by quantization trees. While primarily catering to mathematicians specializing in probability theory and numerical probability, this monograph also holds relevance for data scientists, electrical engineers involved in data transmission, and professionals in economics and logistics who are intrigued by optimal allocation problems
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分 類 LCC:QA273.A1-274.9
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書誌ID 4001093656
ISBN 9783031454646

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