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Main Authors: Witteveen, Olivier, Bauer, Marianne
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.00813
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author Witteveen, Olivier
Bauer, Marianne
author_facet Witteveen, Olivier
Bauer, Marianne
contents The crossword-like patterns of tiles in Scrabble form connected graphs of occupied sites on a square lattice. We find the most structureless description that reproduces means and covariances observed in real Scrabble games by adapting a maximum entropy approach to connected graphs. This pairwise model captures the data well, and predicts word-length statistics and geometric features of the Scrabble graphs correctly; in addition, the parameters of this model are interpretable and allow us to understand Scrabble playing strategies. Using this pairwise model, we calculate entropy differences and distinguishability of Scrabble graphs across languages, without having access to the letters on the tiles. Notably, we find that the entropy is predicted better by strategic gameplay -- such as word length on the board -- than lexicon size. Finally, we find that we can use the pairwise model to correctly assign Scrabble graphs to languages, avoiding explicit feature selection and at relatively low computational cost.
format Preprint
id arxiv_https___arxiv_org_abs_2605_00813
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Statistical mechanics for Scrabble predicts strategy, entropy and language
Witteveen, Olivier
Bauer, Marianne
Biological Physics
Statistical Mechanics
The crossword-like patterns of tiles in Scrabble form connected graphs of occupied sites on a square lattice. We find the most structureless description that reproduces means and covariances observed in real Scrabble games by adapting a maximum entropy approach to connected graphs. This pairwise model captures the data well, and predicts word-length statistics and geometric features of the Scrabble graphs correctly; in addition, the parameters of this model are interpretable and allow us to understand Scrabble playing strategies. Using this pairwise model, we calculate entropy differences and distinguishability of Scrabble graphs across languages, without having access to the letters on the tiles. Notably, we find that the entropy is predicted better by strategic gameplay -- such as word length on the board -- than lexicon size. Finally, we find that we can use the pairwise model to correctly assign Scrabble graphs to languages, avoiding explicit feature selection and at relatively low computational cost.
title Statistical mechanics for Scrabble predicts strategy, entropy and language
topic Biological Physics
Statistical Mechanics
url https://arxiv.org/abs/2605.00813