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Forecasting nonnegative option price distributions using Bayesian kernel methods

机译:使用贝叶斯核方法预测非负期权价格分布

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This paper proposes a novel Bayesian kernel model that can forecast the non-negative distribution of target option prices, which are constrained to be positive. The method utilizes a new transform measure that guarantees the non-negativity of option prices, and can be applied to Bayesian kernel models to provide predictive distributions of option prices. Simulations conducted on the model-generated option data and KOSPI 200 index option data show that the proposed method not only provide a predictive distribution of non-negative option prices, but also preserves the probabilistic distribution of large deviations. We also perform a very extensive empirical study on a large-scale time series of option prices to assess the prediction performance of the proposed method. We find that the method outperforms other state of the arts non-parametric methods in prediction accuracy and is statistically different.
机译:本文提出了一种新颖的贝叶斯核模型,该模型可以预测目标期权价格的非负分布,并将其约束为正。该方法利用了一种新的变换度量,该度量可以保证期权价格的非负性,并且可以应用于贝叶斯核模型以提供期权价格的预测分布。对模型生成的期权数据和KOSPI 200指数期权数据进行的仿真表明,该方法不仅提供了非负期权价格的预测分布,而且还保留了大偏差的概率分布。我们还对期权价格的大规模时间序列进行了非常广泛的实证研究,以评估所提出方法的预测性能。我们发现该方法在预测准确度方面优于其他非参数方法。

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