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Time series models

By: Deistler, Manfred.
Contributor(s): Scherrer, Wolfgang.
Series: Lecture notes in statistics; v224.Publisher: Cham : Springer, 2022Description: xiv, 201 p. ; ill., (some col.), 24 cm.ISBN: 9783031132124.Subject(s): Stationary processes | Time-series analysis | Time-series mathematical models | Stochastic Processes | Imaging systems | ARMA processes | Covariance function | Granger causality | Hillbert space | Kalman filter | Polynomial matrix | Positive semidefinite | Random variables | Spectral density | Square integrable' Stationary process | Transfer function | White noise | Wiener filter | Wold decompositionDDC classification: 519.55 Summary: This textbook provides a self-contained presentation of the theory and models of time series analysis. Putting an emphasis on weakly stationary processes and linear dynamic models, it describes the basic concepts, ideas, methods and results in a mathematically well-founded form and includes numerous examples and exercises. The first part presents the theory of weakly stationary processes in time and frequency domain, including prediction and filtering. The second part deals with multivariate AR, ARMA and state space models, which are the most important model classes for stationary processes, and addresses the structure of AR, ARMA and state space systems, Yule-Walker equations, factorization of rational spectral densities and Kalman filtering. Finally, there is a discussion of Granger causality, linear dynamic factor models and (G)ARCH models. The book provides a solid basis for advanced mathematics students and researchers in fields such as data-driven modeling, forecasting and filtering, which are important in statistics, control engineering, financial mathematics, econometrics and signal processing, among other subjects.
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Books 519.55 DEI (Browse shelf) Available 034195

Includes bibliographical references and index.

This textbook provides a self-contained presentation of the theory and models of time series analysis. Putting an emphasis on weakly stationary processes and linear dynamic models, it describes the basic concepts, ideas, methods and results in a mathematically well-founded form and includes numerous examples and exercises. The first part presents the theory of weakly stationary processes in time and frequency domain, including prediction and filtering. The second part deals with multivariate AR, ARMA and state space models, which are the most important model classes for stationary processes, and addresses the structure of AR, ARMA and state space systems, Yule-Walker equations, factorization of rational spectral densities and Kalman filtering. Finally, there is a discussion of Granger causality, linear dynamic factor models and (G)ARCH models. The book provides a solid basis for advanced mathematics students and researchers in fields such as data-driven modeling, forecasting and filtering, which are important in statistics, control engineering, financial mathematics, econometrics and signal processing, among other subjects.

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