Bounding Box-based Multi-objective Bayesian Optimization of Risk Measures under Input Uncertainty (AISTATS2024)
This repository contains the experimental codes written by R of the paper named "Bounding Box-based Multi-objective Bayesian Optimization of Risk Measures under Input Uncertainty."
This script computes, the computation time of the acquisition function, simple Pareto hypervolume regret,
In the docking simulation folder, each folder contains additional four documents, Y.csv, input_X.csv, input_W.csv and information.csv.
The values included in Y.csv are the simulator's calculated docking scores with multiplying minus one.
The values included in input_X.csv and input_W.csv are the 10-dimensional and 41-dimensioanl physicochemical explanatory variables calculated by the simulator, respectively.
The information.csv contains identifying names of compound and isomer pairs.