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A New Representation of Ewens-Pitman's Partition Structure and Its Characterization via Riordan Array Sums

Published 6 Mar 2025 in stat.ME and math.CO | (2503.05034v1)

Abstract: Ewens-Pitman's partition structure arises as a system of sampling consistent probability distributions on set partitions induced by the Pitman-Yor process. It is widely used in statistical applications, particularly in species sampling models in Bayesian nonparametrics. Drawing references from the area of representation theory of the infinite symmetric group, we view Ewens-Pitman's partition structure as an example of a non-extreme harmonic function on a branching graph, specifically, the Kingman graph. Taking this perspective enables us to obtain combinatorial and algebraic constructions of this distribution using the interpolation polynomial approach proposed by Borodin and Olshanski (The Electronic Journal of Combinatorics, 7, 2000). We provide a new explicit representation of Ewens-Pitman's partition structure using modern umbral interpolation based on Sheffer polynomial sequences. In addition, we show that a certain type of marginals of this distribution can be computed using weighted row sums of a Riordan array. In this way, we show that some summary statistics and estimators derived from Ewens-Pitman's partition structure can be obtained using methods of generating functions. This approach simplifies otherwise cumbersome calculations of these quantities often involving various special combinatorial functions. In addition, it has the added benefit of being amenable to symbolic computation.

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