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

Patricia Melín, Julio Cesar Monica, Daniela Sánchez, Oscar Castillo

2020Healthcare184 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Artificial neural networkComputer scienceFuzzy logicNeuro-fuzzyAggregate (composite)Ensemble forecastingSet (abstract data type)Data miningTime seriesArtificial intelligenceProcess (computing)Series (stratigraphy)Machine learningFuzzy control systemPaleontologyComposite materialOperating systemBiologyProgramming languageMaterials scienceCOVID-19 epidemiological studiesSARS-CoV-2 and COVID-19 ResearchAnomaly Detection Techniques and Applications
Multiple Ensemble Neural Network Models with Fuzzy Response Aggregation for Predicting COVID-19 Time Series: The Case of Mexico | Litcius