Knihobot

Helmut Lütkepohl

    26. červenec 1951
    Introduction to Multiple Time Series Analysis
    Structural Vector Autoregressive Analysis
    Applied Time Series Econometrics
    • Applied Time Series Econometrics

      • 350 stránek
      • 13 hodin čtení
      4,4(12)Ohodnotit

      Time series econometrics is used for predicting future developments of variables of interest such as economic growth, stock market volatility or interest rates. A model has to be constructed, accordingly, to describe the data generation process and to estimate its parameters. Modern tools to accomplish these tasks are provided in this volume, which also demonstrates by example how the tools can be applied.

      Applied Time Series Econometrics
    • Structural Vector Autoregressive Analysis

      • 756 stránek
      • 27 hodin čtení

      This book discusses the econometric foundations of structural vector autoregressive modeling, as used in empirical macroeconomics, finance, and related fields. Inhaltsverzeichnis 1. Introduction; 2. Vector autoregressive models; 3. Vector error correction models; 4. Structural VAR tools; 5. Bayesian VAR analysis; 6. The relationship between VAR models and other macroeconometric models; 7. A historical perspective on causal inference in macroeconometrics; 8. Identification by short-run restrictions; 9. Estimation subject to short-run restrictions; 10. Identification by long-run restrictions; 11. Estimation subject to long-run restrictions; 12. Inference in models identified by short-run or long-run restrictions; 13. Identification by sign restrictions; 14. Identification by heteroskedasticity or non-gaussianity; 15. Identification based on extraneous data; 16. Structural VAR analysis in a data-rich environment; 17. Nonfundamental shocks; 18. Nonlinear structural VAR models; 19. Practical issues related to trends, seasonality, and structural change; References; Index.

      Structural Vector Autoregressive Analysis