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Simple ensemble-averaging model based on generalized regression neural network in financial forecasting problems

机译:基于广义回归神经网络的简单集成平均模型在财务预测中的应用

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Introduces an ensemble-averaging model based on a GRNN (generalized regression neural network) for financial forecasting. The model trains all input individually using GRNNs and uses a simple ensemble-averaging committee machine to improve the accuracy performance. In a financial problem, there are many different factors that can effect the asset price movement at different times. An experiment is implemented in two different data sets, S&P 500 index and currency exchange rate. The predictive abilities of the model are evaluated on the basis of root mean squared error, standard deviation and percent direction correctness. The study shows a promising result of the model in both data sets.
机译:引入基于GRNN(广义回归神经网络)的集成平均模型进行财务预测。该模型使用GRNN分别训练所有输入,并使用简单的集成平均委员会机器来提高准确性。在财务问题中,有许多不同的因素可以影响资产在不同时间的价格变动。在两个不同的数据集(标准普尔500指数和货币汇率)中进行了实验。基于均方根误差,标准偏差和方向正确性百分比来评估模型的预测能力。这项研究在两个数据集中都显示了该模型的有希望的结果。

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