StratFormer uses a two-phase curriculum with dual-turn tokens and bucket-rate features to model and exploit opponents in Leduc Hold'em, gaining +0.106 BB/hand on average over GTO while keeping near-equilibrium safety.
Part 1: The domain of applicability
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StratFormer: Adaptive Opponent Modeling and Exploitation in Imperfect-Information Games
StratFormer uses a two-phase curriculum with dual-turn tokens and bucket-rate features to model and exploit opponents in Leduc Hold'em, gaining +0.106 BB/hand on average over GTO while keeping near-equilibrium safety.