AI RESEARCH
Mixture-Model Preference Learning for Many-Objective Bayesian Optimization
arXiv CS.LG
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ArXi:2603.28410v1 Announce Type: new Preference-based many-objective optimization faces two obstacles: an expanding space of trade-offs and heterogeneous, context-dependent human value structures. Towards this, we propose a Bayesian framework that learns a small set of latent preference archetypes rather than assuming a single fixed utility function, modelling them as components of a Dirichlet-process mixture with uncertainty over both archetypes and their weights.