English

On merge-models

Discrete Mathematics 2026-04-09 v2 Data Structures and Algorithms Logic in Computer Science Combinatorics Logic

Abstract

Tree-ordered weakly sparse models have recently emerged as a robust framework for representing structures in an ``almost sparse'' way, while allowing the structure to be reconstructed through a simple first-order interpretation. A prominent example is given by twin-models, which are bounded twin-width tree-ordered weakly sparse representations of structures with bounded twin-width derived from contraction sequences. In this paper, we develop this perspective further. First, we show that twin-models can be chosen such that they preserve linear clique-width or clique-width up to a constant factor. Then, we introduce \emph{merge-models}, a natural analog of twin-models for merge-width. Merge-models represent binary relational structures by tree-ordered weakly sparse structures. The original structures can then be recovered by a fixed first-order interpretation. A merge-model can be constructed from a merge sequence. Then, its radius-rr merge-width will be, up to a constant factor, bounded by the radius-rr width of the merge sequence from which it is derived. Finally, we show that twin-models arise naturally as special cases of merge-models, and that binary structures with bounded twin-width are exactly those having a loopless merge-model with bounded radius-r0r_0 merge-width (for some sufficiently large constant r0r_0).

Keywords

Cite

@article{arxiv.2603.26570,
  title  = {On merge-models},
  author = {Hector Buffière and Yuquan Lin and Jaroslav Nešet{ř}il and Patrice Ossona de Mendez and Sebastian Siebertz},
  journal= {arXiv preprint arXiv:2603.26570},
  year   = {2026}
}
R2 v1 2026-07-01T11:41:05.454Z