刘昊辰 (2025-11-01 14:44):
#paper Generating Creative Chess Puzzles. Google DeepMind 于 2025 年 10 月提出一种生成创意国际象棋谜题的方法,先通过基准测试多种生成式 AI 架构(如自回归 Transformer、潜在扩散模型等),再引入基于国际象棋引擎搜索统计数据的强化学习(RL)框架,设计奖励函数提升谜题的独特性、反直觉性、多样性和真实性;该 RL 方法使反直觉谜题生成率从监督学习的 0.22% 提升 10 倍至 2.5%,超过现有数据集(2.1%)和最佳 Lichess 训练模型(0.4%),生成的谜题在新颖性和多样性上达标且保留美学主题,经人类专家评估,其创意性、趣味性和反直觉性优于书籍谜题,最终形成的精选谜题手册获三位世界知名专家认可。下载地址:https://arxiv.org/pdf/2510.23881
arXiv, 2025-10-27T21:43:39Z. DOI: 10.48550/arXiv.2510.23881
Generating Creative Chess Puzzles
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Abstract:
While Generative AI rapidly advances in various domains, generating truly creative, aesthetic, and counter-intuitive outputs remains a challenge. This paper presents an approach to tackle these difficulties in the domain of chess puzzles. We start by benchmarking Generative AI architectures, and then introduce an RL framework with novel rewards based on chess engine search statistics to overcome some of those shortcomings. The rewards are designed to enhance a puzzle's uniqueness, counter-intuitiveness, diversity, and realism. Our RL approach dramatically increases counter-intuitive puzzle generation by 10x, from 0.22\% (supervised) to 2.5\%, surpassing existing dataset rates (2.1\%) and the best Lichess-trained model (0.4\%). Our puzzles meet novelty and diversity benchmarks, retain aesthetic themes, and are rated by human experts as more creative, enjoyable, and counter-intuitive than composed book puzzles, even approaching classic compositions. Our final outcome is a curated booklet of these AI-generated puzzles, which is acknowledged for creativity by three world-renowned experts.
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