Central Limit Theorems via Analytic Combinatorics in Several Variables
Stephen Melczer, Tiadora Ruza

TL;DR
This paper surveys analytic combinatorics in several variables (ACSV) from a probabilistic perspective, demonstrating how its methods can derive limit theorems for multivariate combinatorial generating functions and providing a computational tool for this purpose.
Contribution
It introduces a SageMath package for automatic computation and verification of limit theorems in multivariate combinatorics using ACSV techniques.
Findings
Established explicit local central limit theorems for various combinatorial classes.
Proved a conjecture on the distribution of cycles in restricted permutations.
Developed a symbolic determinant approach for arbitrary dimension analysis.
Abstract
The field of analytic combinatorics is dedicated to the creation of effective techniques to study the large-scale behaviour of combinatorial objects. Although classical results in analytic combinatorics are mainly concerned with univariate generating functions, over the last two decades a theory of analytic combinatorics in several variables (ACSV) has been developed to study the asymptotic behaviour of multivariate sequences. In this work we survey ACSV from a probabilistic perspective, illustrating how its most advanced methods provide efficient algorithms to derive limit theorems, and comparing the results to past work deriving combinatorial limit theorems. Using the results of ACSV, we provide a SageMath package that can automatically compute (and rigorously verify) limit theorems for a large variety of combinatorial generating functions. To illustrate the techniques involved, we…
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Taxonomy
TopicsAdvanced Combinatorial Mathematics · Probability and Statistical Research
