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Active Distribution Learning from Indirect Samples

16 August 2018
Samarth Gupta
Gauri Joshi
Osman Yağan
ArXiv (abs)PDFHTML
Abstract

This paper studies the problem of {\em learning} the probability distribution PXP_XPX​ of a discrete random variable XXX using indirect and sequential samples. At each time step, we choose one of the possible KKK functions, g1,…,gKg_1, \ldots, g_Kg1​,…,gK​ and observe the corresponding sample gi(X)g_i(X)gi​(X). The goal is to estimate the probability distribution of XXX by using a minimum number of such sequential samples. This problem has several real-world applications including inference under non-precise information and privacy-preserving statistical estimation. We establish necessary and sufficient conditions on the functions g1,…,gKg_1, \ldots, g_Kg1​,…,gK​ under which asymptotically consistent estimation is possible. We also derive lower bounds on the estimation error as a function of total samples and show that it is order-wise achievable. Leveraging these results, we propose an iterative algorithm that i) chooses the function to observe at each step based on past observations; and ii) combines the obtained samples to estimate pXp_XpX​. The performance of this algorithm is investigated numerically under various scenarios, and shown to outperform baseline approaches.

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