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    Approximation Schemes for Geometric Knapsack for Packing Spheres and Fat Objects

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    We study the geometric knapsack problem in which we are given a set of dd-dimensional objects (each with associated profits) and the goal is to find the maximum profit subset that can be packed non-overlappingly into a given dd-dimensional (unit hypercube) knapsack. Even if d=2d=2 and all input objects are disks, this problem is known to be NP-hard [Demaine, Fekete, Lang, 2010]. In this paper, we give polynomial-time (1+ε)(1+\varepsilon)-approximation algorithms for the following types of input objects in any constant dimension dd: - disks and hyperspheres, - a class of fat convex polygons that generalizes regular kk-gons for k≥5k\ge 5 (formally, polygons with a constant number of edges, whose lengths are in a bounded range, and in which each angle is strictly larger than π/2\pi/2) - arbitrary fat convex objects that are sufficiently small compared to the knapsack. We remark that in our \textsf{PTAS} for disks and hyperspheres, we output the computed set of objects, but for a Oε(1)O_\varepsilon(1) of them we determine their coordinates only up to an exponentially small error. However, it is not clear whether there always exists a (1+ε)(1+\varepsilon)-approximate solution that uses only rational coordinates for the disks' centers. We leave this as an open problem which is related to well-studied geometric questions in the realm of circle packing.Comment: 28 pages, 8 figure
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