Analysis of The Exchange Rate on The Thai Baht Against The Chinese Yuan Using A Support Vector Machine and Firefly Algorithm

Phakkhaphon Sawatkamon, Pannawit Kongmuangpak, J. Tanthanuch, Benjawan Rodjanadid
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Abstract

       This research constructed an optimal model to forecast the exchange rate of the Thai Baht against the Chinese Yuan by Support Vector Machine model and firefly algorithm. The software used for the construction was R program. The data used for modelling was secondary data collected from Bank of Thailand and the Ministry of Commerce, which consisted of the exchange rate of the Thai Baht against the Chinese Yuan, policy interest rate (per year), the Thai Baht index, import value, export value and international reserve fund. The collection of data was monthly records starting from January 2009 to June 2019, 126 data sets. The first 120 data sets were used for constructing the model and the last 6 data sets were used to verify the model. It was found that there were 3 factors which affected the exchange rate of the Thai baht against the Chinese yuan, with 5% statistical significance. The same direction factors were policy interest rate and import value and the opposite direction factor was international money fund. The optimal support vector machine model obtained was eps-regression type with radial basis function kernel, which had gamma parameter , epsilon parameter  and cost value parameter . The model verification showed that the obtained model provided the root mean square error 0.1518 only whereas the classical multiple linear regression model provided the root mean square error 0.2614.
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基于支持向量机和萤火虫算法的泰铢兑人民币汇率分析
本研究利用支持向量机模型和萤火虫算法构建了预测泰铢兑人民币汇率的最优模型。施工使用的软件为R程序。用于建模的数据是从泰国银行和商务部收集的二手数据,包括泰铢对人民币的汇率、政策利率(每年)、泰铢指数、进口值、出口值和国际储备基金。收集的数据为2009年1月至2019年6月的月度记录,126个数据集。前120个数据集用于构建模型,后6个数据集用于验证模型。结果发现,影响泰铢对人民币汇率的因素有3个,具有5%的统计学显著性。同方向因素是政策利率和进口价值,相反方向因素是国际货币基金。得到的最优支持向量机模型为具有径向基函数核的eps-回归模型,该模型具有gamma参数、epsilon参数和cost值参数。模型验证表明,所得模型的均方根误差仅为0.1518,而经典多元线性回归模型的均方根误差为0.2614。
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