Abstract:
Optimization is a subfield of applied mathematics and is used in the fields of
nano-medicine, applied sciences and computational biology extensively. The
recent trends of optimizations are focused on the algorithm development of
nonlinear programs for complex data sets. During this research, an algorithm
is developed for the application of “Bayesian Optimization”, for the selection
of the most accurate hyper-parameter, using the Python framework as well as
the MatlabTM 2020 packages. The developed model is then implemented on
the experimental data sets, extracted from the online repositories. To ensure the
optimalilty of the forecasting, the algorithms are exploited in detailed manner
during this research.