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Vector quantized radial basis function neural network with embedded multiple local linear models for financial prediction

机译:具有嵌入式多个局部线性模型的矢量量化径向基函数神经网络,用于财务预测

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摘要

In this paper, a model is proposed which combines multiple local linear models with a novel modified probabilistic neural network (MPNN). The proposed model is developed to approximate multiple nonlinear model with reduced computational requirement. The proposed model shows to provide both low bias and variance with reduced computations by utilizing semiparametric local linear approximation and efficient vector quantization of data space. The proposed model is shown to provide comparable performance to other state-of-the-art models in terms of bias, variance and computational requirement in short-term financial prediction.
机译:在本文中,提出了一个模型,该模型将多个局部线性模型与一种新颖的改进概率神经网络(MPNN)相结合。提出的模型被开发为在减少计算需求的情况下近似多个非线性模型。所提出的模型表明,通过利用半参数局部线性逼近和数据空间的有效矢量量化,可以减少计算量并提供低偏差和方差。所显示的模型在短期财务预测中的偏差,方差和计算要求方面显示出与其他最新模型可比的性能。

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