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A divisor generating q-series identity and its applications to probability theory and random graphs (2405.01877v1)

Published 3 May 2024 in math.NT, math.CO, and math.PR

Abstract: In I981, Uchimura studied a divisor generating $q$-series that has applications in probability theory and in the analysis of data structures, called heaps. Mainly, he proved the following identity. For $|q|<1$, \begin{equation*} \sum_{n=1}\infty n qn (q{n+1})_\infty =\sum_{n=1}{\infty} \frac{(-1){n-1} q{\frac{n(n+1)}{2} } }{(1-qn) ( q)n } = \sum{n=1}{\infty} \frac{ qn }{1-qn}. \end{equation*} Over the years, this identity has been generalized by many mathematicians in different directions. Uchimura himself in 1987, Dilcher (1995), Andrews-Crippa-Simon (1997), and recently Gupta-Kumar (2021) found a generalization of the aforementioned identity. Any generalization of the right most expression of the above identity, we name as divisor-type sum, whereas a generalization of the middle expression we say Ramanujan-type sum, and any generalization of the left most expression we refer it as Uchimura-type sum. Quite surprisingly, Simon, Crippa and Collenberg (1993) showed that the same divisor generating function has a connection with random acyclic digraphs. One of the main themes of this paper is to study these different generalizations and present a unified theory. We also discuss applications of these generalized identities in probability theory for the analysis of heaps and random acyclic digraphs.

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