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EXTENDING THE FEATURE SET OF A DATA-DRIVEN ARTIFICIAL NEURAL NETWORK MODEL OF PRICING FINANCIAL OPTIONS

机译:扩展了数据驱动的定价金融选择的数据驱动人工神经网络模型

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摘要

Prices of derivative contracts, such as options, traded in the financial markets are expected to have complex relationships to fluctuations in the values of the underlying assets, the time to maturity and type of exercise of the contracts as well as other macroeconomic variables. Hutchinson, Lo and Poggio showed in 1994 that a non-parametric artificial neural network may be trained to approximate this complex functional relationship. Here, we consider this model with additional inputs relevant to the pricing of options and show that the accuracy of approximation may indeed be improved. We consider volume traded, historic volatility, observed interest rates and combinations of these as additional features. In addition to giving empirical results on how the inclusion of these variables helps predicting option prices, we also analyse prediction errors of the different models with volatility and volume traded as inputs, and report an interesting correlation between their contributions.
机译:在金融市场上交易的衍生合同的价格预计将与潜在资产价值观的波动有复杂的关系,到期时间和合同行使的时间以及其他宏观经济变量。 Hutchinson,LO和Poggio在1994年显示,可能训练非参数的人工神经网络以近似这种复杂的功能关系。在这里,我们考虑此模型,其中包含与选项定价相关的附加输入,并表明近似的准确性可能确实得到改善。我们考虑批量交易,历史性波动,观察到的利率和这些兴趣和组合作为其他特征。除了对纳入这些变量的经验结果有助于预测期权价格,我们还通过作为输入交易的波动性和卷的不同模型的预测误差分析,并报告其贡献之间有趣的相关性。

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