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Publication
ICLR 2023
Conference paper
Min-Max Multi-objective Bilevel Optimization with Applications in Robust Machine Learning
Abstract
We consider a generic min-max multi-objective bilevel optimization problem with applications in robust machine learning such as representation learning and hyperparameter optimization. We design MORBiT, a novel single-loop gradient descent-ascent bilevel optimization algorithm, to solve the generic problem and present a novel analysis showing that MORBiT converges to the first-order stationary point at a rate of for a class of weakly convex problems with objectives upon iterations of the algorithm. Our analysis utilizes novel results to handle the non-smooth min-max multi-objective setup and to obtain a sublinear dependence in the number of objectives . Experimental results on robust representation learning and robust hyperparameter optimization showcase (i)~the advantages of considering the min-max multi-objective setup, and (ii)~convergence properties of the proposed MORBiT.