FERERO: A Flexible Framework for Preference-Guided Multi-Objective Learning

Neural Information Processing Systems 

Finding specific preference-guided Pareto solutions that represent different trade-offs among multiple objectives is critical yet challenging in multi-objective problems. Existing methods are restrictive in preference definitions and/or their theoretical guarantees.In this work, we introduce a Flexible framEwork for pREfeRence-guided multi-Objective learning ( FERERO