Center-Outward q-Dominance: A Sample-Computable Proxy for Strong Stochastic Dominance in Stochastic Multi-Objective Optimisation

Authors

  • Robin van der Laag LIACS, Leiden University
  • Hao Wang LIACS, Leiden University
  • Thomas Bäck LIACS, Leiden University
  • Yingjie Fan LIACS, Leiden University

DOI:

https://doi.org/10.1609/aaai.v40i31.39805

Abstract

Stochastic multi-objective optimization (SMOOP) requires ranking multivariate distributions; yet, most empirical studies perform scalarization, which loses information and is unreliable. Based on the optimal transport theory, we introduce the center-outward q-dominance relation and prove it implies strong first-order stochastic dominance (FSD). Also, we develop an empirical test procedure based on q-dominance, and derive an explicit sample size threshold, n(δ), to control the Type I error. We verify the usefulness of our approach in two scenarios: (1) as a ranking method in hyperparameter tuning; (2) as a selection method in multi-objective optimization algorithms. For the former, we analyze the final stochastic Pareto sets of seven multi-objective hyperparameter tuners on the YAHPO-MO benchmark tasks with q-dominance, which allows us to compare these tuners when the expected hypervolume indicator (HVI, the most common performance metric) of the Pareto sets becomes indistinguishable. For the latter, we replace the mean value-based selection in the NSGA-II algorithm with q-dominance, which shows a superior convergence rate on noise-augmented ZDT benchmark problems. These results establish center-outward q-dominance as a principled, tractable foundation for seeking truly stochastically dominant solutions for SMOOPs.

Published

2026-03-14

How to Cite

van der Laag, R., Wang, H., Bäck, T., & Fan, Y. (2026). Center-Outward q-Dominance: A Sample-Computable Proxy for Strong Stochastic Dominance in Stochastic Multi-Objective Optimisation. Proceedings of the AAAI Conference on Artificial Intelligence, 40(31), 26037–26045. https://doi.org/10.1609/aaai.v40i31.39805

Issue

Section

AAAI Technical Track on Machine Learning VIII