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Predicting the stock price of frontier markets using machine learning and modified Black-Scholes Option pricing model

机译:预测使用机器学习和改装Black-Scholes选项定价模型的前沿市场的股票价格

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The Black-Scholes Option pricing model (BSOPM) has long been in use for valuation of equity options to find the price of stocks. In this work, using BSOPM, we have come up with a comparative analytical approach and numerical technique to find the price of call option and put option and considered these two prices as buying price and selling price of stocks in the frontier markets so that we can predict the stock price (close price). Changes have been made in the model to find the parameters such as 'strike price' and the 'time of expiration' for calculating stock price of frontier markets. To verify the result obtained using modified BSOPM, we have used machine learning approach using the software Rapidminer, where we have adopted different algorithms like the decision tree, ensemble learning method and neural network. It has been observed that, the prediction of close price using machine learning is very similar to the one obtained using BSOPM. Machine learning approach stands out to be a better predictor over BSOPM, because Black-Scholes-Merton equation includes risk and dividend parameter, which changes continuously. We have also numerically calculated volatility. As the price of the stocks goes up due to overpricing, volatility increases at a tremendous rate and when volatility becomes very high; market tends to fall, which can be observed and determined using our modified BSOPM. The proposed modified BSOPM has also been explained based on the analogy of Schrodinger equation (and heat equation) of quantum physics. (C) 2020 Elsevier B.V. All rights reserved.
机译:Black-Scholes选项定价模型(BSOPM)已长期用于估值股权选项以找到股票价格。在这项工作中,使用BSOPM,我们提出了一种比较分析方法和数值技术,找到了呼叫选项的价格并将其置于选项,并将这两款价格视为购买价格和售价在前沿市场的股票价格,以便我们可以预测股价(关闭价格)。在模型中取得了变化,以找到“罢工价格”等参数,以及计算前沿市场股票价格的“罢工价格”。为了验证使用修改的BSOPM获得的结果,我们使用了使用软件Rapidminer的机器学习方法,我们采用了不同的算法,如决策树,集合学习方法和神经网络。已经观察到,使用机器学习的关闭价格预测与使用BSOPM获得的密封性非常相似。机器学习方法在BSOPM方面是一个更好的预测因素,因为Black-Scholes-Merton方程包括风险和股息参数,连续变化。我们还具有数值计算的波动性。由于股票价格由于过度估计,波动率以巨大的速度增加,并且当波动变得非常高;市场往往会跌倒,可以使用我们修改的BSOPM来观察和确定。还基于量子物理学的Schrodinger方程(和热方程)的类比来解释所提出的修改的BSOPM。 (c)2020 Elsevier B.v.保留所有权利。

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