Introduction to Statistical Time Series, Second Edition
Author(s):
First published:15 December 1995
Print ISBN:9780471552390 |Online ISBN:9780470316917 |DOI:10.1002/9780470316917
Copyright © 1996 John Wiley & Sons, Inc.
Book Series:Wiley Series in Probability and Statistics
About this book
The subject of time series is of considerable interest, especially among researchers
in econometrics, engineering, and the natural sciences. As part of the prestigious
Wiley Series in Probability and Statistics, this book provides a lucid introduction
to the field and, in this new Second Edition, covers the important advances of recent
years, including nonstationary models, nonlinear estimation, multivariate models,
state space representations, and empirical model identification. New sections have
also been added on the Wold decomposition, partial autocorrelation, long memory processes,
and the Kalman filter.
Major topics include:
* Moving average and autoregressive processes
* Introduction to Fourier analysis
* Spectral theory and filtering
* Large sample theory
* Estimation of the mean and autocorrelations
* Estimation of the spectrum
* Parameter estimation
* Regression, trend, and seasonality
* Unit root and explosive time series
To accommodate a wide variety of readers, review material, especially on elementary results in Fourier analysis, large sample statistics, and difference equations, has been included.
Major topics include:
* Moving average and autoregressive processes
* Introduction to Fourier analysis
* Spectral theory and filtering
* Large sample theory
* Estimation of the mean and autocorrelations
* Estimation of the spectrum
* Parameter estimation
* Regression, trend, and seasonality
* Unit root and explosive time series
To accommodate a wide variety of readers, review material, especially on elementary results in Fourier analysis, large sample statistics, and difference equations, has been included.
Author Bios
WAYNE A. FULLER is Distinguished Professor in the Departments of Statistics and Economics
at Iowa State University. He is the author of Measurement Error Models and numerous
articles in time series, survey sampling, and econometrics. A Fellow of the American
Statistical Association, the Institute of Mathematical Statistics, and the Econometric
Society, he received his PhD in agricultural economics from Iowa State University.


