支持向量机GARCH和神经网络GARCH模型在条件波动率建模中的应用:土耳其金融市场

M. Bildirici, Ozgur Omer Ersin
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引用次数: 3

摘要

本文的土耳其语版本可在http://ssrn.com/abstract=2222071找到。本研究旨在探讨基于支持向量回归(SVR)和神经网络(NN)模型的线性GARCH、分数积分FI-GARCH和非对称功率APGARCH模型及其非线性对应模型。GARCH族模型从Donaldson和Kamstra(1997)的NN-GARCH架构扩展到NN-APGARCH模型等各种NN-GARCH族模型(Bildirici和Ersin, 2009)。本文旨在引入一类扩展的NN-GARCH和SVR-GARCH模型族,对条件均值和条件方差进行非线性增广建模。评估了SVR-GARCH、SVR-APGARCH和SVR-FIAPGARCH以及基于多层感知器架构的MLP-GARCH、MLP-APGARCH和MLP-FIAPGARCH。提供了伊斯坦布尔ISE100股票指数每日收益的应用程序。结果表明,具有神经网络结构的模型可以更有效地模拟波动性聚类、不对称性和非线性特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support Vector Machine GARCH and Neural Network GARCH Models in Modeling Conditional Volatility: An Application to Turkish Financial Markets
The Turkish version of this paper can be found at: http://ssrn.com/abstract=2222071 The study aims to investigate linear GARCH, fractionally integrated FI-GARCH and Asymmetric Power APGARCH models and their nonlinear counterparts based on Support Vector Regression (SVR) and Neural Network (NN) models. GARCH family models are extended to NN-GARCH architecture of Donaldson and Kamstra (1997) to various NN-GARCH family models (Bildirici and Ersin, 2009) such as NN-APGARCH model. The study aims to introduce a class of extended NN-GARCH and SVR-GARCH family of models with nonlinear augmentations in modeling both the conditional mean and variance. The SVR-GARCH, SVR-APGARCH and SVR-FIAPGARCH and their Multi-Layer Perceptron architecture based counterparts, MLP-GARCH, MLP-APGARCH and MLP-FIAPGARCH are evaluated. An application to daily returns in Istanbul ISE100 stock index is provided. Results suggest that volatility clustering, asymmetry and nonlinearity characteristics are modeled more efficiently with the models possessing neural network architectures.
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