Elements of multivariate time series analysis
Author(s)
Bibliographic Information
Elements of multivariate time series analysis
(Springer series in statistics)
Springer, c1997
2nd ed
Available at 50 libraries
  Aomori
  Iwate
  Miyagi
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Note
Bibliography: p. [332]-344
Includes indexes
Description and Table of Contents
Description
Elements of Multivariate Time Series Analysis, Second Edition introduces the basic concepts and methods that are useful in the analysis and modeling of multivariate time series data that may arise in business and economics, engineering, geophysical sciences, and other fields. The book concentrates on the time-domain analysis of multivariate time series, and assumes a background in univariate time series analysis. It covers basic topics such as stationary processes and their covariance matrix structure, vector AR, MA, and ARMA models, forecasting, least squares and maximum likelihood estimation for ARMA models, associated likelihood ratio testing procedures, and other model specification methods useful for model building and model checking. In this revised edition, additional topics have been added and parts of the first edition have been expanded. The most notable addition is a new chapter that discusses topics that arise when exogenous variables are involved in model structures, generally through consideration of the ARMAX models. The book also includes exercise sets and multivariate time series data sets.
In addition to serving as a textbook, this book will also be useful to researchers and graduate students in the areas of statistics, econometrics, business, and engineering.
Table of Contents
- Contents: Vector time Series and model representations
- Vector ARMA time series models and forecasting
- Canonical structure of vector ARMA models
- Initial model building and least squares estimation for vector AR models
- Maximum likelihood estimation and model checking for vector ARMA models
- Reduced-rank and nonstationary co- integrated models
- State-space models, Kalman filtering, and related topics
- Linear models with exogenous variables
- Appendix: Time series data sets.
by "Nielsen BookData"