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Energy Consumption Forecasting Using Support Vector Machines for Beijing

机译:使用支持向量机北京的能耗预测

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摘要

Support vector machines (SVM) is a widely used method which can treat problems involving small sample, devilish learning, and high dimension. The current paper conduct a multivariate SVM in a total-factor production framework, and the GDP per capita, capital stock and labor are taken as the independent variables and the energy consumption is the dependent variable. The Gaussian radial basis function is taken as the kernel function, and then the energy consumptions of Beijing between the periods 1978-2008 are forecasted. The empirical results suggest that the multivariable SVM is valid in forecasting energy consumption.
机译:支持向量机(SVM)是一种广泛使用的方法,可以治疗涉及小样本,恶体学习和高维度的问题。目前纸张在总因素生产框架中进行多元SVM,并且作为独立变量,能耗是依赖变量的,将人均GDP,资本股票和劳动力作为依赖变量。高斯径向基函数被视为内核功能,然后预测北京之间的能量消耗。经验结果表明,多变量的SVM在预测能耗中有效。

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