In this paper we develop general LP and ILP techniques to find an approximate solution with improved objective value close to an existing solution. The task of improving an ap-proximate solution is closely related to a classical theorem of Cook et al. [7] in the sensitivity analysis for LPs and ILPs. This result is often applied in designing robust algorithms for online problems. We apply our new techniques to the online bin packing problem, where it is allowed to reassign a certain number of items, measured by the migration factor. The migration factor is defined by the total size of reassigned items divided by the size of the arriving item. We obtain a robust asymptotic fully polynomial time approximation scheme (AFPTAS) for the online bi...
Online Bin Stretching: Algorithms and Computer Lower Bounds Author: Martin Böhm Abstract: We investi...
We consider the NP Hard problem of online Bin Packing while requiring that larger (or longer) items ...
AbstractWe study a new variant of the online bin-packing problem, in which each item ai is associate...
In this paper we develop general LP and ILP techniques to improve an approximate solution by changin...
The typical online bin-packing problem requires the fitting of a sequence of rationals in (0, 1] int...
We consider the relaxed online strip packing problem, where rectangular items arrive online and have...
The classical on-line bin-packing problem, unlike typical on-line problems, does not admit any reorg...
Semi-online models where decisions may be revoked in a limited way have been studied extensively in ...
We consider the fully dynamic bin packing problem, where items arrive and depart in an online fashio...
In competitive analysis, we usually do not put any restrictions on the computational complexity of o...
Abstract. In the bin packing problem we are given an instance consist-ing of a sequence of items wit...
In this paper, two new algorithms for on-line bin packing are given, under the assumption that each ...
AbstractThe classical bin packing problem is one of the best-known and most widely studied problems ...
Semi-online models where decisions may be revoked in a limited way have been studied extensively in ...
Thesis (Ph.D.)--University of Washington, 2017-06This thesis deals with several important algorithmi...
Online Bin Stretching: Algorithms and Computer Lower Bounds Author: Martin Böhm Abstract: We investi...
We consider the NP Hard problem of online Bin Packing while requiring that larger (or longer) items ...
AbstractWe study a new variant of the online bin-packing problem, in which each item ai is associate...
In this paper we develop general LP and ILP techniques to improve an approximate solution by changin...
The typical online bin-packing problem requires the fitting of a sequence of rationals in (0, 1] int...
We consider the relaxed online strip packing problem, where rectangular items arrive online and have...
The classical on-line bin-packing problem, unlike typical on-line problems, does not admit any reorg...
Semi-online models where decisions may be revoked in a limited way have been studied extensively in ...
We consider the fully dynamic bin packing problem, where items arrive and depart in an online fashio...
In competitive analysis, we usually do not put any restrictions on the computational complexity of o...
Abstract. In the bin packing problem we are given an instance consist-ing of a sequence of items wit...
In this paper, two new algorithms for on-line bin packing are given, under the assumption that each ...
AbstractThe classical bin packing problem is one of the best-known and most widely studied problems ...
Semi-online models where decisions may be revoked in a limited way have been studied extensively in ...
Thesis (Ph.D.)--University of Washington, 2017-06This thesis deals with several important algorithmi...
Online Bin Stretching: Algorithms and Computer Lower Bounds Author: Martin Böhm Abstract: We investi...
We consider the NP Hard problem of online Bin Packing while requiring that larger (or longer) items ...
AbstractWe study a new variant of the online bin-packing problem, in which each item ai is associate...