Solving Mathematical Epidemiology Models Via Neural Nets Tuned By Mesh Adaptive Direct Search
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2022-11
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Ahmad, Muhammad Jalil, & Korhan Gunel. "Solving Mathematical Epidemiology Models Via Neural Nets Tuned By Mesh Adaptive Direct Search." In Proceedings of the Symposium on BEER (November 2022). https://ir.library.illinoisstate.edu/cgi/viewcontent.cgi?article=1637&context=beer
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Abstract
This study was carried out with the aim of developing an artificial neural network model that will predict the rate of positive cases, infected and recovered individuals in the population with respect to the COVID-19 pandemic in Turkey