9781848162785-1848162782-LARGE SAMPLE INFERENCE FOR LONG MEMORY PROCESSES

LARGE SAMPLE INFERENCE FOR LONG MEMORY PROCESSES

ISBN-13: 9781848162785
ISBN-10: 1848162782
Edition: 1
Author: Hira L Koul, Donatas Surgailis, Liudas Giraitis
Publication date: 2011
Publisher: Imperial College Press
Format: Hardcover 596 pages
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Book details

ISBN-13: 9781848162785
ISBN-10: 1848162782
Edition: 1
Author: Hira L Koul, Donatas Surgailis, Liudas Giraitis
Publication date: 2011
Publisher: Imperial College Press
Format: Hardcover 596 pages

Summary

LARGE SAMPLE INFERENCE FOR LONG MEMORY PROCESSES (ISBN-13: 9781848162785 and ISBN-10: 1848162782), written by authors Hira L Koul, Donatas Surgailis, Liudas Giraitis, was published by Imperial College Press in 2011. With an overall rating of 4.0 stars, it's a notable title among other Applied (Mathematics) books. You can easily purchase or rent LARGE SAMPLE INFERENCE FOR LONG MEMORY PROCESSES (Hardcover) from BooksRun, along with many other new and used Applied books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $0.3.

Description

A discrete-time stationary stochastic process with finite variance is said to have long memory if its autocorrelations tend to zero hyperbolically in the lag, i.e. like a power of the lag, as the lag tends to infinity. The absolute sum of autocorrelations of such processes diverges and their spectral density at the origin is unbounded. This is unlike the so-called weakly dependent processes, where autocorrelations tend to zero exponentially fast and the spectral density is bounded at the origin. In a long memory process, the dependence between the current observation and the one at a distant future is persistent; whereas in the weakly dependent processes, these observations are approximately independent. This fact alone is enough to warn a person about the validity of the classical inference procedures based on the square root of the sample size standardization when data are generated by a long-term memory process.The aim of this volume is to provide a text at the graduate level from which one can learn, in a concise fashion, some basic theory and techniques of proving limit theorems for numerous statistics based on long memory processes. It also provides a guide to researchers about some of the inference problems under long memory.

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