PulseAugur
实时 08:06:11

New papers detail faster regret minimization for online optimization and games

Two new arXiv papers explore advancements in regret minimization for online optimization and game theory. The first paper introduces a simpler, computationally efficient algorithm for minimizing linear swap regret with a near-optimal bound, leveraging response-based approachability. The second paper presents Parallel CFR, a framework for real-time, depth-limited counterfactual regret minimization that achieves significant speedups by parallelizing iterations and offloading leaf node evaluation to GPUs. AI

影响 These papers advance theoretical and practical approaches to regret minimization, crucial for developing more robust and efficient AI agents in complex decision-making environments.

排序理由 Two academic papers published on arXiv detailing new algorithms and frameworks for regret minimization.

在 arXiv cs.AI 阅读 →

AI 生成摘要 · Google Gemini · 来自 2 个来源。 我们如何撰写摘要 →

New papers detail faster regret minimization for online optimization and games

报道来源 [2]

  1. arXiv cs.LG TIER_1 English(EN) · Ioannis Anagnostides, Gabriele Farina, Maxwell Fishelson, Haipeng Luo, Jon Schneider ·

    Swap Regret Minimization Through Response-Based Approachability

    arXiv:2602.06264v3 Announce Type: replace Abstract: We consider the problem of minimizing different notions of swap regret in online optimization. These forms of regret are tightly connected to correlated equilibrium concepts in games, and have been more recently shown to guarant…

  2. arXiv cs.AI TIER_1 Română(RO) · Longbo Huang ·

    Real-Time Parallel Counterfactual Regret Minimization

    Counterfactual Regret Minimization (CFR) is the dominant algorithmic family for solving large imperfect-information games, underpinning breakthroughs such as Libratus and Pluribus in No-Limit Texas Hold'em poker. In real-time game-playing systems, the solver must compute a near-e…