Predictive analysis effectiveness in determining the epidemic disease infected area

Epidemic disease outbreak had caused nowadays community to raise their great concern over the infectious disease controlling, preventing and handling methods to diminish the disease dissemination percentage and infected area. Backpropagation method was used for the counter measure and prediction ana...

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Hauptverfasser: Ibrahim, Najihah, Akhir, Nur Shazwani Md, Hassan, Fadratul Hafinaz
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creator Ibrahim, Najihah
Akhir, Nur Shazwani Md
Hassan, Fadratul Hafinaz
description Epidemic disease outbreak had caused nowadays community to raise their great concern over the infectious disease controlling, preventing and handling methods to diminish the disease dissemination percentage and infected area. Backpropagation method was used for the counter measure and prediction analysis of the epidemic disease. The predictive analysis based on the backpropagation method can be determine via machine learning process that promotes the artificial intelligent in pattern recognition, statistics and features selection. This computational learning process will be integrated with data mining by measuring the score output as the classifier to the given set of input features through classification technique. The classification technique is the features selection of the disease dissemination factors that likely have strong interconnection between each other in causing infectious disease outbreaks. The predictive analysis of epidemic disease in determining the infected area was introduced in this preliminary study by using the backpropagation method in observation of other’s findings. This study will classify the epidemic disease dissemination factors as the features for weight adjustment on the prediction of epidemic disease outbreaks. Through this preliminary study, the predictive analysis is proven to be effective method in determining the epidemic disease infected area by minimizing the error value through the features classification.
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subjects Back propagation
Classification
Data mining
Disease control
Epidemics
Feature recognition
Infectious diseases
Learning
Machine learning
Neural networks
Outbreaks
Pattern recognition
Predictions
Weight
title Predictive analysis effectiveness in determining the epidemic disease infected area
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