Nested Convex Bodies are Chaseable
July 18, 2017 Β· Declared Dead Β· π Algorithmica
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Authors
Nikhil Bansal, Martin BΓΆhm, Marek EliΓ‘Ε‘, Grigorios Koumoutsos, Seeun William Umboh
arXiv ID
1707.05527
Category
cs.DS: Data Structures & Algorithms
Citations
32
Venue
Algorithmica
Last Checked
3 months ago
Abstract
In the Convex Body Chasing problem, we are given an initial point $v_0$ in $R^d$ and an online sequence of $n$ convex bodies $F_1, ..., F_n$. When we receive $F_i$, we are required to move inside $F_i$. Our goal is to minimize the total distance travelled. This fundamental online problem was first studied by Friedman and Linial (DCG 1993). They proved an $Ξ©(\sqrt{d})$ lower bound on the competitive ratio, and conjectured that a competitive ratio depending only on d is possible. However, despite much interest in the problem, the conjecture remains wide open. We consider the setting in which the convex bodies are nested: $F_1 \supset ... \supset F_n$. The nested setting is closely related to extending the online LP framework of Buchbinder and Naor (ESA 2005) to arbitrary linear constraints. Moreover, this setting retains much of the difficulty of the general setting and captures an essential obstacle in resolving Friedman and Linial's conjecture. In this work, we give the first $f(d)$-competitive algorithm for chasing nested convex bodies in $R^d$.
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