AI RESEARCH

Adaptive Smooth Tchebycheff Attention for Multi-Objective Policy Optimization

arXiv CS.AI

ArXi:2605.12771v1 Announce Type: cross Multi-objective reinforcement learning in robotic domains requires balancing complex, non-convex trade-offs between conflicting objectives. While linear scalarization methods provide stability, they are theoretically incapable of recovering solutions within non-convex regions of the Pareto front. Conversely, static non-linear scalarizations (e.g., Tchebycheff) can theoretically access these regions but often suffer from severe gradient variance and optimization instability in deep RL.