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Introduction to Statistical Time Series, Second Edition

✍ Scribed by Wayne A. Fuller(auth.)


Year
1996
Tongue
English
Leaves
720
Series
Wiley Series in Probability and Statistics
Category
Library

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✦ Synopsis


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.Content:
Chapter 1 Introduction (pages 1–20):
Chapter 2 Moving Average and Autoregressive Processes (pages 21–111):
Chapter 3 Introduction to Fourier Analysis (pages 112–142):
Chapter 4 Spectral Theory and Filtering (pages 143–213):
Chapter 5 Some Large Sample Theory (pages 214–307):
Chapter 6 Estimation of the Mean and Autocorrelations (pages 308–354):
Chapter 7 The Periodogram, Estimated Spectrum (pages 355–403):
Chapter 8 Parameter Estimation (pages 404–474):
Chapter 9 Regression, Trend, and Seasonality (pages 475–545):
Chapter 10 Unit Root and Explosive Time Series (pages 546–663):


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