Time series econometrics / Klaus Neusser.
Material type: TextSeries: Springer Texts in Business and EconomicsPublication details: Switzerland : Springer, 2016.Description: xxiv, 409 pages : illustrations (some color) ; 24 cmISBN:- 9783319328614
- 330.015195 23 N496
Item type | Current library | Call number | Status | Date due | Barcode | Item holds | |
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Books | ISI Library, Kolkata | 330.015195 N496 (Browse shelf(Opens below)) | Available | 137935 |
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330.015195 M953 Econometrics and data analysis for developing countries | 330.015195 N119 Econometrics | 330.015195 N448 Essays in panel data econometrics | 330.015195 N496 Time series econometrics / | 330.015195 N834 Equilibrium models in an applied framework : | 330.015195 P128 Nonparametric econometrics | 330.015195 P317 Primer for unit root testing |
Includes bibliographical references and index.
1. Introduction --
2. ARMA models --
3. Forecasting stationary processes --
4. Estimation of Mean and Autocovariance Function --
5. Estimation of ARMA Models --
6. Spectral Analysis and Linear Filters --
7. Integrated Processes --
8. Models of Volatility --
Part II. Multivariate Time series analysis --
9. Introduction --
10. Definitions and stationarity --
11. Estimation of Covariance Function --
12. VARMA Processes --
13. Estimation of VAR Models --
14. Forecasting with VAR Models --
15. Interpretation of VAR Models --
16. Cointegration --
17. Kalman Filter --
18. Generalizations of linear models.
This text presents modern developments in time series analysis and focuses on their application to economic problems. The book first introduces the fundamental concept of a stationary time series and the basic properties of covariance, investigating the structure and estimation of autoregressive-moving average (ARMA) models and their relations to the covariance structure. The book then moves on to non-stationary time series, highlighting its consequences for modeling and forecasting and presenting standard statistical tests and regressions. Next, the text discusses volatility models and their applications in the analysis of financial market data, focusing on generalized autoregressive conditional heteroskedastic (GARCH) models. The second part of the text devoted to multivariate processes, such as vector autoregressive (VAR) models and structural vector autoregressive (SVAR) models, which have become the main tools in empirical macroeconomics. The text concludes with a discussion of co-integrated models and the Kalman Filter, which is being used with increasing frequency. Mathematically rigorous, yet application-oriented, this self-contained text will help students develop a deeper understanding of theory and better command of the models that are vital to the field. Assuming a basic knowledge of statistics and/or econometrics, this text is best suited for advanced undergraduate and beginning graduate students.
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