Functional Gaussian Approximation For Dependent Structures

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Last edited by ImportBot
September 14, 2021 | History

Functional Gaussian Approximation For Dependent Structures

First edition
  • 1 Want to read

This book has its origin in the need of developing and analysing mathematical models for phenomena that evolve in time and influence each another, and aims at a better understanding of the structure and asymptotic behaviour of stochastic processes.

Publish Date
Language
English
Pages
500

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Edition Availability
Cover of: Functional Gaussian Approximation For Dependent Structures
Functional Gaussian Approximation For Dependent Structures
April 28, 2019, Oxford University Press
Hardcover in English - First edition

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Book Details


Edition Notes

Formerly CIP.
Includes bibliographical references (pages 465-475) and index.

Published in
Oxford, UK
Series
Oxford Studies in Probability; Book 6
Copyright Date
©2019

Classifications

Library of Congress
QA274.4 .M47 2019, QA274.4

The Physical Object

Format
Hardcover
Pagination
xv, 478 pages ; 24 cm.
Number of pages
500
Dimensions
9 x 1 x 6 inches
Weight
2 pounds

ID Numbers

Open Library
OL28362400M
ISBN 10
019882694X
ISBN 13
9780198826941
LCCN
2018960483
OCLC/WorldCat
1107574152
Goodreads
42902529

Source records

Better World Books record

Work Description

Functional Gaussian Approximation for Dependent Structures develops and analyses mathematical models for phenomena that evolve in time and influence each another. It provides a better understanding of the structure and asymptotic behaviour of stochastic processes.

Two approaches are taken. Firstly, the authors present tools for dealing with the dependent structures used to obtain normal approximations. Secondly, they apply normal approximations to various examples. The main tools consist of inequalities for dependent sequences of random variables, leading to limit theorems, including the functional central limit theorem and functional moderate deviation principle. The results point out large classes of dependent random variables which satisfy invariance principles, making possible the statistical study of data coming from stochastic processes both with short and long memory.

The dependence structures considered throughout the book include the traditional mixing structures, martingale-like structures, and weakly negatively dependent structures, which link the notion of mixing to the notions of association and negative dependence. Several applications are carefully selected to exhibit the importance of the theoretical results. They include random walks in random scenery and determinantal processes. In addition, due to their importance in analysing new data in economics, linear processes with dependent innovations will also be considered and analysed.

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History

Download catalog record: RDF / JSON
September 14, 2021 Edited by ImportBot import existing book
July 21, 2020 Edited by Kaustubh Chakraborty Added new book
July 21, 2020 Created by Kaustubh Chakraborty Added new book.