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Interacting reinforced stochastic processes: statistical inference based on the weighted empirical means

Abstract

This work deals with a system of interacting reinforced stochastic processes, where each process Xj=(Xn,j)nX^j=(X_{n,j})_n is located at a vertex jj of a finite weighted direct graph, and it can be interpreted as the sequence of "actions" adopted by an agent jj of the network. The interaction among the dynamics of these processes depends on the weighted adjacency matrix WW associated to the underlying graph: indeed, the probability that an agent jj chooses a certain action depends on its personal "inclination" Zn,jZ_{n,j} and on the inclinations Zn,hZ_{n,h}, with hjh\neq j, of the other agents according to the entries of WW. The best known example of reinforced stochastic process is the Polya urn. The present paper characterizes the asymptotic behavior of the weighted empirical means Nn,j=k=1nqn,kXk,jN_{n,j}=\sum_{k=1}^n q_{n,k} X_{k,j}, proving their almost sure synchronization and some central limit theorems in the sense of stable convergence. By means of a more sophisticated decomposition of the considered processes adopted here, these findings complete and improve some asymptotic results for the personal inclinations Zj=(Zn,j)nZ^j=(Z_{n,j})_n and for the empirical means Xj=(k=1nXk,j/n)n\overline{X}^j=(\sum_{k=1}^n X_{k,j}/n)_n given in recent papers (e.g. [arXiv:1705.02126, Bernoulli, Forth.]; [arXiv:1607.08514, Ann. Appl. Probab., 27(6):3787-3844, 2017]; [arXiv:1602.06217, Stochastic Process. Appl., 129(1):70-101, 2019]). Our work is motivated by the aim to understand how the different rates of convergence of the involved stochastic processes combine and, from an applicative point of view, by the construction of confidence intervals for the common limit inclination of the agents and of a test statistics to make inference on the matrix WW, based on the weighted empirical means. In particular, we answer a research question posed in [arXiv:1705.02126, Bernoulli, Forth.]

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