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Improving option price forecasts with neural networks and support vector regressions

机译:使用神经网络和支持向量回归改善期权价格预测

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Options are important financial derivatives that allow investors to control their investment risks in the securities market. Determining the theoretical price for an option, or option pricing, is regarded as one of the most important issues in financial research; a number of parametric and nonparametric option pricing approaches have been presented. While the objective of option pricing is to find the current fair price, for decision making, in contrast, the forecasting activity has to accurately predict the future option price without advance knowledge of the underlying asset price. In this paper, a simple and effective nonparametric method of forecasting option prices based on neural networks (NNs) and support vector regressions (SVRs) is presented. We first modified the improved conventional option pricing methods, allowing them to forecast the option prices. Second, we employed the NNs and SVRs to further decrease the forecasting errors of the parametric methods. Since the conventional methods mimic the trends of movement of the real option prices, using these methods in a first stage allows the NNs and SVRs to concentrate their power in nonlinear curve approximation to further reduce the forecasting errors in a second stage. Finally, extensive experimental studies with data from the Hong Kong option market demonstrated the ability of NNs and SVRs to improve forecast accuracy.
机译:期权是重要的金融衍生产品,可让投资者控制证券市场的投资风险。确定期权的理论价格或期权定价被认为是金融研究中最重要的问题之一。已经提出了许多参数和非参数期权定价方法。相反,尽管期权定价的目的是找到当前的公允价格,但为了进行决策,预测活动必须准确地预测未来的期权价格,而无需事先了解基础资产价格。本文提出了一种基于神经网络和支持向量回归的简单有效的非参数期权价格预测方法。我们首先修改了改进的常规期权定价方法,使他们能够预测期权价格。其次,我们采用神经网络和SVR来进一步减少参数方法的预测误差。由于常规方法模拟了实物期权价格的变化趋势,因此在第一阶段使用这些方法可以使NN和SVR将其功率集中在非线性曲线逼近上,从而进一步减少第二阶段的预测误差。最后,对来自香港期权市场的数据进行的广泛实验研究表明,NN和SVR可以提高预测准确性。

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