Support Vector Regression Based GARCH Model with Application to Forecasting Volatility of Financial Returns

Shiyi Chen, Kiho Jeong, W. Härdle
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引用次数: 25

Abstract

In recent years, support vector regression (SVR), a novel neural network (NN) technique, has been successfully used for financial forecasting. This paper deals with the application of SVR in volatility forecasting. Based on a recurrent SVR, a GARCH method is proposed and is compared with a moving average (MA), a recurrent NN and a parametric GACH in terms of their ability to forecast financial markets volatility. The real data in this study uses British Pound-US Dollar (GBP) daily exchange rates from July 2, 2003 to June 30, 2005 and New York Stock Exchange (NYSE) daily composite index from July 3, 2003 to June 30, 2005. The experiment shows that, under both varying and fixed forecasting schemes, the SVR-based GARCH outperforms the MA, the recurrent NN and the parametric GARCH based on the criteria of mean absolute error (MAE) and directional accuracy (DA). No structured way being available to choose the free parameters of SVR, the sensitivity of performance is also examined to the free parameters.
基于支持向量回归的GARCH模型及其在财务收益波动性预测中的应用
近年来,支持向量回归(SVR)作为一种新颖的神经网络技术,已成功地应用于金融预测。本文研究了支持向量回归在波动率预测中的应用。基于递归支持向量回归,提出了一种GARCH方法,并将其与移动平均(MA)、递归神经网络和参数GACH在预测金融市场波动方面的能力进行了比较。本研究的真实数据采用2003年7月2日至2005年6月30日的英镑对美元(GBP)每日汇率和2003年7月3日至2005年6月30日的纽约证券交易所(NYSE)每日综合指数。实验表明,无论在变化预测方案还是固定预测方案下,基于svr的GARCH都优于基于平均绝对误差(MAE)和方向精度(DA)标准的MA、递归NN和参数GARCH。由于没有结构化的方法来选择支持向量回归的自由参数,因此还检验了性能对自由参数的敏感性。
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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