"I think the book is very valuable and useful to graduate students in statistics, mathematics, engineering, and the like.? Also, it could be of tremendous help to practioners.? Even though the book is written in a clear, easy to follow narrative style with plenty of illustrations, one should nevertheless have a sufficient knowledge of graduate level mathematical statistics.? By reading and understanding the book one should, in the end, feel very confident in time series and analysis." (MAA Reviews, January 2009)
Product DescriptionA modernized new edition of one of the most trusted books on time series analysis. Since publication of the first edition in 1970, Time Series Analysis has served as one of the most influential and prominent works on the subject. This new edition maintains its balanced presentation of the tools for modeling and analyzing time series and also introduces the latest developments that have occurred n the field over the past decade through applications from areas such as business, finance, and engineering.The Fourth Edition provides a clearly written exploration of the key methods for building, classifying, testing, and analyzing stochastic models for time series as well as their use in five important areas of application: forecasting; determining the transfer function of a system; modeling the effects of intervention events; developing multivariate dynamic models; and designing simple control schemes. Along with these classical uses, modern topics are introduced through the book's new features, which include:
- A new chapter on multivariate time series analysis, including a discussion of the challenge that arise with their modeling and an outline of the necessary analytical tools
- New coverage of forecasting in the design of feedback and feedforward control schemes
- A new chapter on nonlinear and long memory models, which explores additional models for application such as heteroscedastic time series, nonlinear time series models, and models for long memory processes
- Coverage of structural component models for the modeling, forecasting, and seasonal adjustment of time series
- A review of the maximum likelihood estimation for ARMA models with missing values