AET framework unifies SER and ESR criteria for nonlinear MORL; AETDICE enables offline optimization via DICE-style estimation in augmented state space.
The max-min formulation of multi-objective reinforcement learning: From theory to a model-free algorithm
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AETDICE: Unified Framework and Offline Optimization for Nonlinear Multi-Objective RL
AET framework unifies SER and ESR criteria for nonlinear MORL; AETDICE enables offline optimization via DICE-style estimation in augmented state space.