Though the organisms or insects causing infectious disease are normally harmless
but under certain conditions, some may cause serious diseases. Dengue is such kind
of disease that is transmitted by mosquitoes and caused by any of the four related
dengue viruses and causes infections leading to fever and fatigue. Taking rest and
home remedies can sometimes cure mild infections while sometimes life-threatening
infections may need hospitalization. As such, the outbreak of dengue is one of the
top diseases causing the most deaths worldwide including in Bangladesh. Since 1964,
Bangladesh has experienced the sporadic occurrence of dengue until 2000 when the
rst epidemic of dengue was reported in the capital city, Dhaka. Since then, the
disease has shown an annual occurrence in all major cities of the country. The state-
of-the-art methodologies e.g., machine learning approaches are now being used in
many countries for early predicting or forecasting dengue cases. In this paper, we
propose to drive machine learning algorithms for the early prediction of dengue cases
in Bangladesh. We collect and preprocess meteorological data of Dhaka city to t
into the machine learning models. In this work, we proposed a weighted average en-
semble technique of ve machine learning methodologies for predicting the number
of dengue cases per month from meteorological data. The proposed approach pro-
duces promising results in predicting the dengue cases for our testing data samples,
which shows a great potentiality to employ machine learning algorithms successfully
for early dengue incident prediction in various cities of Bangladesh. We hope that
our methodology can contribute to further research on predicting dengue incidents
in Bangladesh using meteorological data.