Estimating Stock Price in Energy Market Including Oil, Gas, and Coal: The Comparison of Linear and Non- Linear Two-State Markov Regime Switching Models

R. Mohseni, Armaghan Sakhtkar
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Abstract

A common method to study the dynamic behavior of macroeconomic variables is using linear time series models; however, they are unable to explain nonlinear behavior of the series. Given the dependency between stock market and derivatives, the behavior of the underlying asset price can be modeled using Markov switching process properties and the economic regime significance. In this paper, a two-state Markov switching model in energy market has been examined for oil, coal, and gas since 1991 to 2011. The objective price estimated by the switching model and the parameters were determined by using MATLAB program. With regard to the relationship between the total price and the variables defined in this paper, it is concluded that the non-linear model is relatively better than the linear model, since it has lower RMSE and greater R-squared, therefore it is better to use nonlinear model in Markov switching model for predicting the price of stocks.
包括石油、天然气和煤炭在内的能源市场股票价格估计:线性和非线性两态马尔可夫状态切换模型的比较
研究宏观经济变量动态行为的常用方法是使用线性时间序列模型;然而,它们无法解释级数的非线性行为。鉴于股票市场与衍生品之间的依赖关系,基础资产价格的行为可以使用马尔可夫转换过程属性和经济制度显著性来建模。本文从1991年到2011年,研究了能源市场中石油、煤炭和天然气的两态马尔可夫切换模型。利用MATLAB程序确定了切换模型估计的目标电价和参数。对于总价格与本文定义的变量之间的关系,可以得出结论:非线性模型相对优于线性模型,因为非线性模型的RMSE更小,r方更大,因此在马尔可夫切换模型中使用非线性模型来预测股票价格更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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