Simulation of Random Variables under Rényi Divergence Measures of All Orders

05/31/2018
by   Lei Yu, et al.
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The random variable simulation problem consists in using a k-dimensional i.i.d. random vector X^k with distribution P_X^k to simulate an n-dimensional i.i.d. random vector Y^n so that its distribution is approximately Q_Y^n. In contrast to previous works, in this paper we consider the standard Rényi divergence and two variants of all orders to measure the level of approximation. These two variants are the max-Rényi divergence D_α^max(P,Q) and the sum-Rényi divergence D_α^+(P,Q). When α=∞, these two measures are strong because for any ϵ>0, D_∞^max(P,Q)≤ϵ or D_∞^+(P,Q)≤ϵ implies e^-ϵ≤P(x)/Q(x)≤ e^ϵ for all x. Under these Rényi divergence measures, we characterize the asymptotics of normalized divergences as well as the Rényi conversion rates. The latter is defined as the supremum of n/k such that the Rényi divergences vanish asymptotically. In addition, when the Rényi parameter is in the interval (0,1), the Rényi conversion rates equal the ratio of the Shannon entropies H(P_X)/H(Q_Y), which is consistent with traditional results in which the total variation measure was adopted. When the Rényi parameter is in the interval (1,∞], the Rényi conversion rates are, in general, larger than H(P_X)/H(Q_Y). When specialized to the case in which either P_X or Q_Y is uniform, the simulation problem reduces to the source resolvability and intrinsic randomness problems. The preceding results are used to characterize the asymptotics of Rényi divergences and the Rényi conversion rates for these two cases.

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