Forecasting the Volatility of KOSPI 200 Using Data Mining

  • Kim, Keon-Kyun (Department of Statistics, Chonnam National University) ;
  • Cho, Mee-Hye (Department of Statistics, Chonnam National University) ;
  • Park, Eun-Sik (Department of Statistics, Chonnam National University)
  • Published : 2008.11.30

Abstract

As index option markets grow recently, many analysts and investors become interested in forecasting the volatility of KOSPI 200 Index to achieve portfolio's goal from the point of financial risk management and asset evaluation. To serve this purpose, we introduce NN and SVM integrated with other financial series models such as GARCH, EGARCH, and EWMA. Moreover, according to the empirical test, Integrating NN with GARCH or EWMA models improves prediction power in terms of the precision and the direction of the volatility of KOSPI 200 index. However, integrating SVM with financial series models doesn't improve greatly the prediction power. In summary, SVM-EGARCH was the best in terms of predicting the direction of the volatility and NN-GARCH was the best in terms of the prediction precision. We conclude with advantages of the integration process and the need for integrating models to enhance the prediction power.

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