info:eu-repo/semantics/article
Central limit theorem for a class of globally correlated random variables
Fecha
2016-06Registro en:
Budini, Adrian Adolfo; Central limit theorem for a class of globally correlated random variables; American Physical Society; Physical Review E; 93; 6; 6-2016; 62114-62114
2470-0053
CONICET Digital
CONICET
Autor
Budini, Adrian Adolfo
Resumen
The standard central limit theorem with a Gaussian attractor for the sum of independent random variables may lose its validity in the presence of strong correlations between the added random contributions. Here, we study this problem for similar interchangeable globally correlated random variables. Under these conditions, a hierarchical set of equations is derived for the conditional transition probabilities. This result allows us to define different classes of memory mechanisms that depend on a symmetric way on all involved variables. Depending on the correlation mechanisms and statistics of the single variables, the corresponding sums are characterized by distinct probability densities. For a class of urn models it is also possible to characterize their domain of attraction, which, as in the standard case, is parametrized by the probability density of each random variable. Symmetric and asymmetric q-Gaussian attractors (q<1) arise in a particular two-state case of these urn models.