Asymptotic results for weighted means of linear combinations of independent Poisson random variables |
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Authors: | Rita Giuliano Claudio Macci |
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Affiliation: | 1. Dipartimento di Matematica, Università di Pisa, Pisa, Italy;2. Dipartimento di Matematica, Università di Roma Tor Vergata, Rome, Italy |
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Abstract: | ABSTRACT In this paper we prove the large deviation principle for a class of weighted means of linear combinations of independent Poisson distributed random variables, which converge weakly to a normal distribution. The interest in these linear combinations is motivated by the diffusion approximation in Lansky [On approximations of Stein's neuronal model, J. Theoret. Biol. 107 (1984), pp. 631–647] of the Stein's neuronal model (see Stein [A theoretical analysis of neuronal variability, Biophys. J. 5 (1965), pp. 173–194]). We also prove an analogue result for sequences of multivariate random variables based on the diffusion approximation in Tamborrino, Sacerdote, and Jacobsen [Weak convergence of marked point processes generated by crossings of multivariate jump processes. Applications to neural network modeling, Phys. D 288 (2014), pp. 45–52]. The weighted means studied in this paper generalize the logarithmic means. We also investigate moderate deviations. |
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Keywords: | Almost sure limits diffusion approximation large deviations logarithmic means moderate deviations |
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