Colored Interacting Particle Systems on the Ring: Stationary Measures from Yang-Baxter Equation
Amol Aggarwal, Matthew Nicoletti, Leonid Petrov

TL;DR
This paper introduces a unified integrable approach using the Yang-Baxter equation to construct stationary measures for various colored particle systems on the ring and line, connecting algebraic structures with probabilistic models.
Contribution
It develops a new method based on integrable stochastic vertex models to derive stationary measures for multiple multi-species particle systems, generalizing previous approaches.
Findings
Constructed stationary measures as partition functions of queue vertex models.
Unified approach applies to multiple particle systems including ASEP, q-Boson, and q-PushTASEP.
Derived stationary currents and established a colored Burke's theorem.
Abstract
Recently, there has been much progress in understanding stationary measures for colored (also called multi-species or multi-type) interacting particle systems, motivated by asymptotic phenomena and rich underlying algebraic and combinatorial structures (such as nonsymmetric Macdonald polynomials). In this paper, we present a unified approach to constructing stationary measures for most of the known colored particle systems on the ring and the line, including (1) the Asymmetric Simple Exclusion Process (multispecies ASEP, or mASEP); (2) the q-deformed Totally Asymmetric Zero Range Process (TAZRP) also known as the q-Boson particle system; (3) the q-deformed Pushing Totally Asymmetric Simple Exclusion Process (q-PushTASEP). Our method is based on integrable stochastic vertex models and the Yang-Baxter equation. We express the stationary measures as partition functions of new "queue…
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Taxonomy
TopicsRandom Matrices and Applications · Advanced Combinatorial Mathematics · Statistical Methods and Bayesian Inference
