Alaleh AhmadianshalchiSyrine BelakariaJanardhan Rao Doppa
We consider the problem of constrained multi-objective optimization over black-box objectives, with user-defined preferences, with a largely infeasible input space. Our goal is to approximate the optimal Pareto set from the small fraction of feasible inputs. The main challenges include huge design space, multiple objectives, numerous constraints, and rare feasible inputs identified only through expensive experiments. We present PAC-MOO, a novel preference-aware multi-objective Bayesian optimization algorithm to solve this problem. It leverages surrogate models for objectives and constraints to intelligently select the sequence of inputs for evaluation to achieve the target goal.
Alaleh AhmadianshalchiSyrine BelakariaJanardhan Rao Doppa
Xue FengZhengyun RenAnqi PanJuchen HongYinghao Tong
Ryota OzakiKazuki IshikawaYouhei KanzakiShion TakenoIchiro TakeuchiMasayuki Karasuyama
Alexandre MathernOlof Skogby SteinholtzAnders SjöbergMagnus ÖnnheimKristine EkRasmus RemplingEmil GustavssonMats Jirstrand
Paul FeliotJulien BectEmmanuel Vázquez