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STUDY ON THE VAR MODEL BASED ON THE SIMULATION OF SUPPORT VECTOR MACHINE

机译:基于支持向量机仿真的VAR模型研究

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Three computational methods are applied to traditional VaR model at present, including delta positive, Monte Carlo simulation and history simulation, however, some defects exist in the traditional methods such as fat tail, nonlinearity, big estimated error, complexity of the calculations, etc.In this paper, SVM theory is applied to VaR model by choosing Gaussian normal distribution function as kernel function.The new VaR model overcomes the defects, and is effective in approximating and generalizing compared with traditional ones; therefore, it is a significant complement to VaR system.
机译:目前,三种计算方法应用于传统的VAR模型,包括Delta阳性,蒙特卡罗模拟和历史模拟,然而,在传统方法中存在一些缺陷,如脂肪尾,非线性,大估计误差,计算复杂性等。在本文中,通过选择高斯常规分布函数作为内核功能来应用SVM理论。新的VAR模型克服了缺陷,并且与传统方式相比有效和概括;因此,它是VAR系统的重要补充。

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