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Parametric models and non-parametric machine learning models for predicting option prices: Empirical comparison study over KOSPI 200 Index options

机译:用于预测期权价格的参数模型和非参数机器学习模型:基于KOSPI 200指数期权的经验比较研究

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摘要

We investigated the performance of parametric and non-parametric methods concerning the in-sample pricing and out-of-sample prediction performances of index options. Comparisons were performed on the KOSPI 200 Index options from January 2001 to December 2010. To verify the statistical differences between the compared methods, we tested the following null hypothesis: two series of forecasting errors have the same mean-squared value. The experimental study reveals that non-parametric methods significantly outperform parametric methods on both in-sample pricing and out-of-sample pricing. The outperforming non-parametric method is statistically different from the other models, and significantly different from the parametric models. The Gaussian process model delivers the most outstanding performance in forecasting, and also provides the predictive distribution of option prices.
机译:我们研究了有关指数期权的样本内定价和样本外预测性能的参数方法和非参数方法的性能。从2001年1月至2010年12月,对KOSPI 200指数选项进行了比较。为了验证所比较方法之间的统计差异,我们测试了以下零假设:两个系列的预测误差均值相同。实验研究表明,在样本内定价和样本外定价方面,非参数方法均明显优于参数方法。表现优异的非参数方法在统计上与其他模型不同,并且与参数模型显着不同。高斯过程模型提供了最出色的预测性能,还提供了期权价格的预测分布。

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