Using machine learning on a diverse class of problems : from rainfall to criminal actions
Abstract
We intend to compare and analyze certain machine learning algorithms by taking two
different datasets tackling separate real world issues. The first one relates to agriculture.
Bangladesh, being an agrarian country, is heavily dependent on rain. Being able to predict
the rainfall amount accurately would enable successful and sustainable production.
Machine learning algorithms can also help predict the category of crimes in a particular
area. This will enable law enforcers in a certain region to predict and categorize recent
crimes based on past incidents. Our aim was to approach these problems by labelling
and processing the data and then comparing the results of different cost functions.