International audienceIn this paper, we study the advice complexity of the online bin packing problem. In this well-studied setting, the online algorithm is supplemented with some additional information concerning the input. We improve upon both known upper and lower bounds of online algorithms for this problem. On the positive side, we first provide a relatively simple algorithm that achieves a competitive ratio arbitrarily close to 1.5, using constant-size advice. Our result implies that 16 bits of advice suffice to obtain a competitive ratio better than any online algorithm without advice, thus improving the previously known bound of O(log(n)) bits required to attain this performance. In addition, we introduce a more complex algorithm th...
The typical online bin-packing problem requires the fitting of a sequence of rationals in (0, 1] int...
Online Bin Stretching: Algorithms and Computer Lower Bounds Author: Martin Böhm Abstract: We investi...
AbstractWe study a new variant of the online bin-packing problem, in which each item ai is associate...
International audienceIn this paper, we study the advice complexity of the online bin packing proble...
We consider the online bin packing problem under the advice complexity model where the "online const...
In this paper, we study the problem of the online bin packing with advice. Assume that there is an o...
In competitive analysis, we usually do not put any restrictions on the computational complexity of o...
AbstractThe classical bin packing problem is one of the best-known and most widely studied problems ...
Recently, Renault (2016) studied the dual bin packing problem in the per-request advice model of onl...
AbstractIn competitive analysis, we usually do not put any restrictions on the computational complex...
We revisit the classic online bin packing problem studied in the half-century. In this problem, item...
Abstract. In the bin packing problem we are given an instance consist-ing of a sequence of items wit...
In online problems, the input forms a finite sequence of requests. Each request must be processed, i...
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...
The typical online bin-packing problem requires the fitting of a sequence of rationals in (0, 1] int...
Online Bin Stretching: Algorithms and Computer Lower Bounds Author: Martin Böhm Abstract: We investi...
AbstractWe study a new variant of the online bin-packing problem, in which each item ai is associate...
International audienceIn this paper, we study the advice complexity of the online bin packing proble...
We consider the online bin packing problem under the advice complexity model where the "online const...
In this paper, we study the problem of the online bin packing with advice. Assume that there is an o...
In competitive analysis, we usually do not put any restrictions on the computational complexity of o...
AbstractThe classical bin packing problem is one of the best-known and most widely studied problems ...
Recently, Renault (2016) studied the dual bin packing problem in the per-request advice model of onl...
AbstractIn competitive analysis, we usually do not put any restrictions on the computational complex...
We revisit the classic online bin packing problem studied in the half-century. In this problem, item...
Abstract. In the bin packing problem we are given an instance consist-ing of a sequence of items wit...
In online problems, the input forms a finite sequence of requests. Each request must be processed, i...
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...
The typical online bin-packing problem requires the fitting of a sequence of rationals in (0, 1] int...
Online Bin Stretching: Algorithms and Computer Lower Bounds Author: Martin Böhm Abstract: We investi...
AbstractWe study a new variant of the online bin-packing problem, in which each item ai is associate...