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Generalizing Bottleneck Problems

Abstract

Given a pair of random variables (X,Y)PXY(X,Y)\sim P_{XY} and two convex functions f1f_1 and f2f_2, we introduce two bottleneck functionals as the lower and upper boundaries of the two-dimensional convex set that consists of the pairs (If1(W;X),If2(W;Y))\left(I_{f_1}(W; X), I_{f_2}(W; Y)\right), where IfI_f denotes ff-information and WW varies over the set of all discrete random variables satisfying the Markov condition WXYW \to X \to Y. Applying Witsenhausen and Wyner's approach, we provide an algorithm for computing boundaries of this set for f1f_1, f2f_2, and discrete PXYP_{XY}. In the binary symmetric case, we fully characterize the set when (i) f1(t)=f2(t)=tlogtf_1(t)=f_2(t)=t\log t, (ii) f1(t)=f2(t)=t21f_1(t)=f_2(t)=t^2-1, and (iii) f1f_1 and f2f_2 are both β\ell^\beta norm function for β2\beta \geq 2. We then argue that upper and lower boundaries in (i) correspond to Mrs. Gerber's Lemma and its inverse (which we call Mr. Gerber's Lemma), in (ii) correspond to estimation-theoretic variants of Information Bottleneck and Privacy Funnel, and in (iii) correspond to Arimoto Information Bottleneck and Privacy Funnel.

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