DocumentCode :
436369
Title :
Volatility Forecasts of the S&P100 by Evolutionary Programming in a Modified Time Series Data Mining Framework
Author :
Ma, Irwin ; Wong, Tony ; Sankar, Thiagas ; Siu, Raymond
Author_Institution :
Universite du Quebec, Montreal Quebec
Volume :
17
fYear :
2004
fDate :
June 28 2004-July 1 2004
Firstpage :
567
Lastpage :
572
Abstract :
Traditional parametric methods have limited success in estimating and forecasting the volatility of financial securities. Recent advance in evolutionary computation has provided additional tools to conduct data mining effectively. The current work applies the genetic programming in a Time Series Data Mining framework to characterize the S&P100 high frequency data in order to Forecast the one step ahead integrated volatility. Results of the experiment have shown to be superior to those derived by the traditional methods.
Keywords :
Data mining; Data security; Frequency; Genetic algorithms; Genetic programming; Helium; Modems; Pricing; Risk management; Stochastic processes; Soft Computing; data mining and management; financial volatility forecasting;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Automation Congress, 2004. Proceedings. World
Conference_Location :
Seville
Print_ISBN :
1-889335-21-5
Type :
conf
Filename :
1439427
Link To Document :
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