We study online bounded space bin packing in the resource augmentation model of competitive analysis. In this model, the online bounded space packing algorithm has to pack a list L of items in (0,1] into a small number of bins of size b = 1. Its performance is measured by comparing the produced packing against the optimal offline packing of the list L into bins of size 1. We present a complete solution to this problem: For every bin size b = 1, we design online bounded space bin packing algorithms whose worst case ratio in this model comes arbitrarily close to a certain bound ¿(b). Moreover, we prove that no online bounded space algorithm can perform better than ¿(b) in the worst case
We improve the lower bound on the asymptotic competitive ratio of any online algorithm for bin packi...
We study the online bin packing problem under two stochastic settings. In the bin packing problem, w...
AbstractThe classical bin packing problem is one of the best-known and most widely studied problems ...
We study online bounded space bin packing in the resource augmentation model of competitive analysis...
We study online bounded space bin packing in the resource augmentation model of competitive analysis...
AbstractWe study on-line bounded space bin-packing in the resource augmentation model of competitive...
In competitive analysis, we usually do not put any restrictions on the computational complexity of o...
AbstractIn competitive analysis, we usually do not put any restrictions on the computational complex...
We solve an open problem in the literature by providing an online algorithm for multidimensional bin...
textabstractWe solve an open problem in the literature by providing an online algorithm for multidim...
AbstractWe consider a natural resource allocation problem in which we are given a set of items, wher...
We analyze approximation algorithms for bounded-space bin packing by comparing them against the opti...
Abstract. In the bin packing problem we are given an instance consist-ing of a sequence of items wit...
LNCS v. 5878 entitled: Algorithms and Computation : 20th International Symposium, ISAAC 2009 ... pro...
In this paper, we study 1-space bounded multi-dimensional bin packing. A sequence of items arrive ov...
We improve the lower bound on the asymptotic competitive ratio of any online algorithm for bin packi...
We study the online bin packing problem under two stochastic settings. In the bin packing problem, w...
AbstractThe classical bin packing problem is one of the best-known and most widely studied problems ...
We study online bounded space bin packing in the resource augmentation model of competitive analysis...
We study online bounded space bin packing in the resource augmentation model of competitive analysis...
AbstractWe study on-line bounded space bin-packing in the resource augmentation model of competitive...
In competitive analysis, we usually do not put any restrictions on the computational complexity of o...
AbstractIn competitive analysis, we usually do not put any restrictions on the computational complex...
We solve an open problem in the literature by providing an online algorithm for multidimensional bin...
textabstractWe solve an open problem in the literature by providing an online algorithm for multidim...
AbstractWe consider a natural resource allocation problem in which we are given a set of items, wher...
We analyze approximation algorithms for bounded-space bin packing by comparing them against the opti...
Abstract. In the bin packing problem we are given an instance consist-ing of a sequence of items wit...
LNCS v. 5878 entitled: Algorithms and Computation : 20th International Symposium, ISAAC 2009 ... pro...
In this paper, we study 1-space bounded multi-dimensional bin packing. A sequence of items arrive ov...
We improve the lower bound on the asymptotic competitive ratio of any online algorithm for bin packi...
We study the online bin packing problem under two stochastic settings. In the bin packing problem, w...
AbstractThe classical bin packing problem is one of the best-known and most widely studied problems ...