State Space and Unobsorved Component Models: Theroy and Applications
Andrew Harvey, Siem Jan Koopman and Neil Shephard, (2004)

Publisher: Cambridge Press
ISBN:
9780521835954
Hardback
Pages: 394 pages
Price: £40.00 +p&p


Contents

Table of Contents
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Table of Contents

Part I. State Space Models:

1. Introduction to state space time series analysis James Durbin;

2. State structure, decision making and related issues Peter Whittle;

3. An introduction to particle filters Simon Maskell; Part II. Testing:

4. Frequence domain and wavelet-based estimation for long-memory signal plus noise models Katsuto Tanaka;

5. A goodness-of-fit test for AR (1) models and power against state-space alternatives T. W. Anderson and Michael A. Stephens;

6. Test for cycles Andrew C. Harvey; Part III. Bayesian Inference and Bootstrap:

7. Efficient Bayesian parameter estimation Sylvia Frühwirth-Schnatter;

8. Empirical Bayesian inference in a nonparametric regression model Gary Koop and Dale Poirier;

9. Resampling in state space models David S. Stoffer and Kent D. Wall; Part IV. Applications:

10. Measuring and forecasting financial variability using realised variance Ole E. Barndorff- Nielsen, Bent Nielsen, Neil Shephard and Carla Ysusi;

11. Practical filtering for stochastic volatility models Jonathan R. Stroud, Nicholas G. Polson and Peter Müller;

12. On RegComponent time series models and their applications William R. Bell;

13. State space modeling in macroeconomics and finance using SsfPack in S+Finmetrics Eric Zivot, Jeffrey Wang and Siem Jan Koopman;

14. Finding genes in the human genome with hidden Markov models Richard Durbin.