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Multiple Ensemble Neural Network Models with Fuzzy Response Aggregation for Predicting COVID-19 Time Series: The Case of Mexico

机译:具有模糊响应聚合的多集成神经网络模型用于预测COVID-19时间序列:墨西哥的情况

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摘要

In this paper, a multiple ensemble neural network model with fuzzy response aggregation for the COVID-19 time series is presented. Ensemble neural networks are composed of a set of modules, which are used to produce several predictions under different conditions. The modules are simple neural networks. Fuzzy logic is then used to aggregate the responses of several predictor modules, in this way, improving the final prediction by combining the outputs of the modules in an intelligent way. Fuzzy logic handles the uncertainty in the process of making a final decision about the prediction. The complete model was tested for the case of predicting the COVID-19 time series in Mexico, at the level of the states and the whole country. The simulation results of the multiple ensemble neural network models with fuzzy response integration show very good predicted values in the validation data set. In fact, the prediction errors of the multiple ensemble neural networks are significantly lower than using traditional monolithic neural networks, in this way showing the advantages of the proposed approach.
机译:本文提出了一种针对COVID-19时间序列的具有模糊响应聚合的多重集成神经网络模型。集成神经网络由一组模块组成,这些模块用于在不同条件下产生多个预测。这些模块是简单的神经网络。然后使用模糊逻辑来聚合几个预测器模块的响应,以这种方式,通过以智能方式组合模块的输出来改善最终预测。模糊逻辑处理有关预测的最终决策过程中的不确定性。在州和整个国家范围内,对完整模型进行了测试,以预测墨西哥的COVID-19时间序列。具有模糊响应积分的多个集成神经网络模型的仿真结果在验证数据集中显示出非常好的预测值。实际上,多集成神经网络的预测误差明显低于使用传统的整体神经网络的预测误差,从而显示了所提出方法的优势。

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