Online bin packing with cardinality constraints resolved
August 23, 2016 Β· Declared Dead Β· π Embedded Systems and Applications
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Authors
JΓ‘nos Balogh, JΓ³zsef BΓ©kΓ©si, GyΓΆrgy DΓ³sa, Leah Epstein, Asaf Levin
arXiv ID
1608.06415
Category
cs.DS: Data Structures & Algorithms
Citations
27
Venue
Embedded Systems and Applications
Last Checked
3 months ago
Abstract
Cardinality constrained bin packing or bin packing with cardinality constraints is a basic bin packing problem. In the online version with the parameter k \geq 2, items having sizes in (0,1] associated with them are presented one by one to be packed into unit capacity bins, such that the capacities of bins are not exceeded, and no bin receives more than k items. We resolve the online problem in the sense that we prove a lower bound of 2 on the overall asymptotic competitive ratio. This closes this long standing open problem, since an algorithm of an absolute competitive ratio 2 is known. Additionally, we significantly improve the known lower bounds on the asymptotic competitive ratio for every specific value of k. The novelty of our constructions is based on full adaptivity that creates large gaps between item sizes. Thus, our lower bound inputs do not follow the common practice for online bin packing problems of having a known in advance input consisting of batches for which the algorithm needs to be competitive on every prefix of the input.
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