Introduction - If you have any usage issues, please Google them yourself
Abstract Advantages and limitations of the existing models for practical forecasting of
stock market volatility have been identified. Support vector machine (SVM) have been proposed
as a complimentary volatility model that is capable to extract information from multiscale
and high-dimensionalmarket data. Presented results for SP500 index suggest that SVM
can efficiently work with high-dimensional inputs to account for volatility long-memory and
multiscale effects and is often superior to the main-stream volatility models. SVM-based
framework for volatility forecasting is expected to be important in the development of the
novel strategies for volatility trading, advanced risk management systems, and other applications
dealing with multi-scale and high-dimensional market data.
Support Vector Machine as an Efficient Framework for Stock Market Volatility Forecasting.pdf