国際証券市場のボラティリティ:経験的研究<br>Empirical Studies on Volatility in International Stock Markets (Dynamic Modelling and Econometrics in Economics and Finance, 6)

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国際証券市場のボラティリティ:経験的研究
Empirical Studies on Volatility in International Stock Markets (Dynamic Modelling and Econometrics in Economics and Finance, 6)

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  • 製本 Hardcover:ハードカバー版/ページ数 185 p.
  • 言語 ENG
  • 商品コード 9781402075193
  • DDC分類 332.6322201519

基本説明

Describes the existing techniques for the measurement and estimation of volatility in international stock markets with emphasis on the SV model and its empirical application.

Full Description

Empirical Studies on Volatility in International Stock Markets describes the existing techniques for the measurement and estimation of volatility in international stock markets with emphasis on the SV model and its empirical application. Eugenie Hol develops various extensions of the SV model, which allow for additional variables in both the mean and the variance equation. In addition, the forecasting performance of SV models is compared not only to that of the well-established GARCH model but also to implied volatility and so-called realised volatility models which are based on intraday volatility measures.
The intended readers are financial professionals who seek to obtain more accurate volatility forecasts and wish to gain insight about state-of-the-art volatility modelling techniques and their empirical value, and academic researchers and students who are interested in financial market volatility and want to obtain an updated overview of the various methods available in this area.

Contents

List of Figures. List of Tables.
1: Introduction.
2: Asset Return Volatility Models. 2.1. Empirical Stylised Facts of Stock Index Return Series. 2.2. Time-Varying Volatility Models. 2.3. Empirical Applications of Time Varying Volatility Models.
3: The Stochastic Volatility in Mean Model: Empirical Evidence from International Stock Markets. 3.1. Introduction. 3.2. The Stochastic Volatility in Mean Model. 3.3. Some Theory on the Relationship between Returns and Volatility. 3.4. Data. 3.5. Estimation Results for the SVM Model and Some Diagnostics. 3.6. Some Comparisons with GARCH-M Estimation Results. 3.7. Summary and Conclusions.
4: Forecasting with Volatility Models. 4.1. Volatility Models and Their Forecasts. 4.2. An Empirical Study of Six International Stock Indices.
5: Implied Volatility. 5.1. The Black-Scholes Option Pricing Model. 5.2. Forecasting with Implied Volatility: Empirical Evidence.
6: Forecasting the Variability of Stock Index Returns with Stochastic Volatility Models and Implied Volatility. 6.1. Introduction. 6.2. Model Specifications. 6.3. Data Description and Empirical In-Sample Results. 6.4. Volatility Forecasting Methodology. 6.5. Out-of-Sample Results. 6.6. Summary and Conclusions.
7: Stock Index Volatility Forecasting with High-Frequency Data. 7.1. Introduction. 7.2. Stock Return Data and Volatility. 7.3. Realised Volatility Models. 7.4. Daily Time-Varying Volatility Models. 7.5. Forecasting Methodology and Evaluation Criteria. 7.6. Empirical Results. 7.7. Summary and Conclusions.
8: Conclusions.
Appendices: A.1. Model. A.2. Likelihood Evaluation Using Importance Sampling. A.3. Approximating Gaussian Model Used for Importance Sampling. A.4. Monte Carlo Evidence of Estimation Procedure.
B: Estimation of the SVX Models. B.1. The SVX Model in State Space Form. B.2. Parameter Estimation by Simulated Maximum Likelihood. B.3. Computational Implementation.
C: Data and Programs.
Bibliography. Index.