AILGOct 27, 2025

Generating Creative Chess Puzzles

arXiv:2510.23881v12 citationsh-index: 22
Originality Incremental advance
AI Analysis

This addresses the problem of limited creativity in AI-generated content for chess enthusiasts, representing a strong domain-specific advancement.

The paper tackled the challenge of generating creative and counter-intuitive chess puzzles using AI, achieving a 10x increase in counter-intuitive puzzle generation from 0.22% to 2.5%, surpassing existing benchmarks and human-rated compositions.

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.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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