This project will focus on trying to simulate the decision-making of a human researcher using a Bayesian Optimization framework, then comparing the performance across different, improved hyperparameters. By exploring these differences, this project aims to understand the strengths and weaknesses of Bayesian Optimization relative to the decision-making of a researcher with access to the same data.
We will look at three hyperparameters that can be used to define the differences between a researcher and regular Bayesian Optimization: the number of features that can be processed, the degree of exploration vs exploitation, and the interpretability/complexity of the surrogate model.
Please go to the src
folder and run BOv4.ipynb
to run the Bayesian Optimization over one set of hyperparameters. Once all hyperparameters have been run, please use 01-eda.ipynb
to plot the results.