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Contextual Search via Intrinsic Volumes

Abstract

We study the problem of contextual search, a multidimensional generalization of binary search that captures many problems in contextual decision-making. In contextual search, a learner is trying to learn the value of a hidden vector v[0,1]dv \in [0,1]^d. Every round the learner is provided an adversarially-chosen context utRdu_t \in \mathbb{R}^d, submits a guess ptp_t for the value of ut,v\langle u_t, v\rangle, learns whether pt<ut,vp_t < \langle u_t, v\rangle, and incurs loss (ut,v,pt)\ell(\langle u_t, v\rangle, p_t) (for some loss function \ell). The learner's goal is to minimize their total loss over the course of TT rounds. We present an algorithm for the contextual search problem for the symmetric loss function (θ,p)=θp\ell(\theta, p) = |\theta - p| that achieves Od(1)O_{d}(1) total loss. We present a new algorithm for the dynamic pricing problem (which can be realized as a special case of the contextual search problem) that achieves Od(loglogT)O_{d}(\log \log T) total loss, improving on the previous best known upper bounds of Od(logT)O_{d}(\log T) and matching the known lower bounds (up to a polynomial dependence on dd). Both algorithms make significant use of ideas from the field of integral geometry, most notably the notion of intrinsic volumes of a convex set. To the best of our knowledge this is the first application of intrinsic volumes to algorithm design.

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