首页> 外文会议>International Conference on Computational Science and Its Applications(ICCSA 2004) pt.3; 20040514-20040517; Assisi; IT >Forecasting the Volatility of Stock Index Returns: A Stochastic Neural Network Approach
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Forecasting the Volatility of Stock Index Returns: A Stochastic Neural Network Approach

机译:预测股指收益率的波动:随机神经网络方法

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In this paper we are concerned with the volatility modelling of financial data returns, especially with the nonlinear aspects of these models. Our benchmark model for financial data returns is the classical GARCH(1,1) model with conditional normal distribution. As a tool for its nonlinear generalization we propose a Stochastic neural network (SNN) to the modelling and forecasting the time varying conditional volatility of the TUNINDEX (Tunisia Stock Index) returns. Such specification also helps to investigate the degree of nonlinearity in financial data controlled by the neural network architecture. Our empirical analysis shows that out-of-simple volatility forecasts of the SNN are superior to forecasts of traditional linear methods (G ARCH) and also better than merely assuming a conditional Gaussian distribution.
机译:在本文中,我们关注金融数据收益率的波动性建模,尤其是这些模型的非线性方面。我们的财务数据收益基准模型是具有条件正态分布的经典GARCH(1,1)模型。作为其非线性泛化的工具,我们建议使用随机神经网络(SNN)来建模和预测TUNINDEX(突尼斯股票指数)收益的时变条件波动率。这样的规范还有助于研究由神经网络体系结构控制的财务数据的非线性程度。我们的经验分析表明,SNN的非简单波动率预测优于传统线性方法(G ARCH)的预测,并且比仅假设条件高斯分布更好。

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