Record-biased permutations and their permuton limit
For researchers in combinatorics and probability, this work extends the theoretical understanding of a non-uniform permutation model, though the results are incremental and domain-specific.
This paper studies record-biased permutations, providing generative processes and efficient random samplers. It derives expectations and limit distributions for permutation statistics, and establishes convergence to a deterministic permuton in the linear-record regime.
In this article, we study a non-uniform distribution on permutations biased by their number of records that we call \emph{record-biased permutations}. We give several generative processes for record-biased permutations, explaining also how they can be used to devise efficient (linear) random samplers. For several classical permutation statistics, we obtain their expectation using the above generative processes, as well as their limit distributions in the regime that has a logarithmic number of records (as in the uniform case). Finally, increasing the bias to obtain a regime with an expected linear number of records, we establish the convergence of record-biased permutations to a deterministic permuton, which we fully characterize. This model was introduced in our earlier work [N. Auger, M. Bouvel, C. Nicaud, C. Pivoteau, \emph{Analysis of Algorithms for Permutations Biased by Their Number of Records}, AofA 2016], in the context of realistic analysis of algorithms. We conduct here a more thorough study but with a theoretical perspective.