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Printable Handouts
Navigable Slide Index
- Introduction
- Definition of volatility
- Risk
- Risk measures
- Risk measures - example 1
- Risk measures - example 2
- Risk measures - summary
- Empirical characteristics of S and P 500
- Empirical characteristics of S and P 500 returns
- Correlogram of SP500
- S and P 500 squared returns
- S and P 500 absolute returns
- Empirical characteristics of high-frequency returns
- Rolling window volatility
- Volatility modelling (1)
- Volatility modelling (2)
- The ARCH family of models (1)
- The ARCH family of models - a long lag structure
- The ARCH family of models (2)
- GARCH (1,1) news-impact curve (1)
- GARCH (1,1) news-impact curve (2)
- Asymmetric GARCH processes
- EGARCH
- EGARCH (1,1) news-impact
- Estimation
- Maximum likelihood
- Empirical example - ARCH(p)
- Empirical example - GARCH(1,1), EGARCH(1,1)
- Model assessment
- Robust standard errors
- Model selection
- Likelihood ratio test
- Bayesian criteria: Akaike, Schwarz
- Stochastic volatility
- Risk-metrics
- Forecasting
- Forecasting asset returns under ARCH errors
- Confidence intervals for S and P 500 returns
- Forecasting volatility with ARCH (1)
- Forecasting volatility with GARCH (1,1)
- Forecasting with stochastic volatility
- Forecast error statistics
- Pathology of error statistics
- Volatility forecast evaluation
- Volatility forecast evaluation - different approches
- Implied volatility - exchange-traded options
- Implied volatility (1)
- Implied volatility (2)
- Black-scholes implied volatility (1)
- Black-scholes implied volatility (2)
- Implied volatility surface
- References
Topics Covered
- Volatility is the most heavily used measure of risk in financial decision making
- Discussion of validity of various measures of risk
- Statement of conditions under which volatility is a good measure
- Explanation of the empirical properties of data and their dynamics
- Why models need to capture these characteristics
- Analysis of various approaches of volatility estimation with particular emphasis on dynamic models in both univariate and multivariate contexts
- Techniques for volatility model validation
- Explanation of possible pitfalls
- Out-of-sample volatility forecasting using dynamic models and various methods for volatility forecast evaluation
Talk Citation
Christodoulakis, G.A. (2007, October 1). Volatility [Video file]. In The Business & Management Collection, Henry Stewart Talks. Retrieved December 27, 2024, from https://doi.org/10.69645/SSYD9337.Export Citation (RIS)