Elements of Multivariate Time Series Analysis

This book PDF is perfect for those who love Mathematics genre, written by Gregory C. Reinsel and published by Springer Science & Business Media which was released on 06 December 2012 with total hardcover pages 278. You could read this book directly on your devices with pdf, epub and kindle format, check detail and related Elements of Multivariate Time Series Analysis books below.

Elements of Multivariate Time Series Analysis
Author : Gregory C. Reinsel
File Size : 51,8 Mb
Publisher : Springer Science & Business Media
Language : English
Release Date : 06 December 2012
ISBN : 9781468401981
Pages : 278 pages
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Elements of Multivariate Time Series Analysis by Gregory C. Reinsel Book PDF Summary

The use of methods of time series analysis in the study of multivariate time series has become of increased interest in recent years. Although the methods are rather well developed and understood for univarjate time series analysis, the situation is not so complete for the multivariate case. This book is designed to introduce the basic concepts and methods that are useful in the analysis and modeling of multivariate time series, with illustrations of these basic ideas. The development includes both traditional topics such as autocovariance and auto correlation matrices of stationary processes, properties of vector ARMA models, forecasting ARMA processes, least squares and maximum likelihood estimation techniques for vector AR and ARMA models, and model checking diagnostics for residuals, as well as topics of more recent interest for vector ARMA models such as reduced rank structure, structural indices, scalar component models, canonical correlation analyses for vector time series, multivariate unit-root models and cointegration structure, and state-space models and Kalman filtering techniques and applications. This book concentrates on the time-domain analysis of multivariate time series, and the important subject of spectral analysis is not considered here. For that topic, the reader is referred to the excellent books by Jenkins and Watts (1968), Hannan (1970), Priestley (1981), and others.

Elements of Multivariate Time Series Analysis

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Get Book
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