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Stock Index Modeling Using Hierarchical Radial Basis Function Networks

机译:使用分层径向基函数网络的股票指数建模

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摘要

Forecasting exchange rates is an important financial problem that is receiving increasing attention especially because of its difficulty and practical applications. This paper proposes a Hierarchical Radial Basis Function Network (HiRBF) model for forecasting three major international currency exchange rates. Based on the pre-defined instruction sets, HRBF model can be created and evolved. The HRBF structure is developed using the Extended Compact Genetic Programming (ECGP) and the free parameters embedded in the tree are optimized by the Degraded Ceiling Algorithm (DCA). Empirical results indicate that the proposed method is better than the conventional neural network and RBF networks forecasting models.
机译:预测汇率是一个重要的财务问题,尤其由于其困难和实际应用而受到越来越多的关注。本文提出了一种层次径向基函数网络(HiRBF)模型来预测三种主要的国际货币汇率。基于预定义的指令集,可以创建和演化HRBF模型。 HRBF结构是使用扩展紧凑遗传规划(ECGP)进行开发的,并且树中嵌入的自由参数通过降级天花板算法(DCA)进行了优化。实验结果表明,该方法优于传统的神经网络和RBF网络预测模型。

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