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On the Law of Large Numbers for Nonmeasurable Identically Distributed Random Variables

Abstract

Let Ω\Omega be a countable infinite product ΩN\Omega^\N of copies of the same probability space Ω1\Omega_1, and let Ξn{\Xi_n} be the sequence of the coordinate projection functions from Ω\Omega to Ω1\Omega_1. Let Ψ\Psi be a possibly nonmeasurable function from Ω1\Omega_1 to R\R, and let Xn(ω)=Ψ(Ξn(ω))X_n(\omega) = \Psi(\Xi_n(\omega)). Then we can think of Xn{X_n} as a sequence of independent but possibly nonmeasurable random variables on Ω\Omega. Let Sn=X1+...+XnS_n = X_1+...+X_n. By the ordinary Strong Law of Large Numbers, we almost surely have E[X1]lim infSn/nlim supSn/nE[X1]E_*[X_1] \le \liminf S_n/n \le \limsup S_n/n \le E^*[X_1], where EE_* and EE^* are the lower and upper expectations. We ask if anything more precise can be said about the limit points of Sn/nS_n/n in the non-trivial case where E[X1]<E[X1]E_*[X_1] < E^*[X_1], and obtain several negative answers. For instance, the set of points of Ω\Omega where Sn/nS_n/n converges is maximally nonmeasurable: it has inner measure zero and outer measure one

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