Dengue Cases Prediction Using Machine Learning Approach
DOI:
https://doi.org/10.52131/jcsit.2021.0201.0007Keywords:
Dengue Fever (DF), Machine learning, Training dataset, Prediction, forecasting and experimental dataAbstract
Dengue fever, spread by mosquitoes, affects about 3.9 billion people worldwide. Health officials could use indicators of dengue fever outbreaks to start taking preventative measures. Controlling dengue fever may be more straightforward for local authorities if they have timely and accurate disease forecasts. As one of the most rapidly spreading diseases globally, dengue fever is a threat to everyone. Dengue outbreaks can be predicted using machine learning, according to this study. Dengue prediction models could benefit from nature-based algorithms being boosted or used. The only thing that mattered in the prediction and training model was the week of the year, which was the only thing that signified. A standard machine learning algorithm cannot simulate long-term dependencies in time-series data, which is necessary for accurate projections in Dengue fever cases. When it comes to developing risk criteria for severe Dengue, machine learning could be a valuable implement in determining the possible behavior to formulate.
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Copyright (c) 2021 Aima Aziz, Azka Aziz
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.