DocumentCode
2914360
Title
Improved approximation algorithms for multidimensional bin packing problems
Author
Bansal, Nikhil ; Caprara, Alberto ; Sviridenko, Maxim
Author_Institution
IBM T.J. Watson Res. Center, Yorktown Heights, NY
fYear
2006
fDate
Oct. 2006
Firstpage
697
Lastpage
708
Abstract
In this paper we introduce a new general framework for set covering problems, based on the combination of randomized rounding of the (near-)optimal solution of the linear programming (LP) relaxation, leading to a partial integer solution, and the application of a well-behaved approximation algorithm to complete this solution. If the value of the solution returned by the latter can be bounded in a suitable way, as is the case for the most relevant generalizations of bin packing, the method leads to improved approximation guarantees, along with a proof of tighter integrality gaps for the LP relaxation. Applying our general framework we obtain a polynomial-time randomized algorithm for d-dimensional vector packing with approximation guarantee arbitrarily close to ln d + 1. For d = 2, this value is 1.693 ..., i.e., we break the natural 2 "barrier" for this case. Moreover, for small values of d this is a notable improvement over the previously-known O(ln d) guarantee by Chekuri and Khanna (2004). For 2-dimensional bin packing with and without rotations, we construct algorithms with performance guarantee arbitrarily close to 1.525..., improving upon previous algorithms with performance guarantee of 2 + epsiv by Jansen and Zhang (2004) for the problem with rotations and1.691... by Caprara (2002) for the problem without rotations. The previously-unknown key property used in our proofs follows from a retrospective analysis of the implications of the landmark bin packing approximation scheme by Fernandez de la Vega and Lueker (1981). We prove that their approximation scheme is "subset oblivious", which leads to numerous applications. Another byproduct of our paper is an algorithm that solves a well-known configuration LP for 2-dimensional bin packing within a factor of (1 + epsiv) for any epsiv gt; 0. Interestingly, we do it without using an approximate separation oracle, which would correspond to a well-known geometric 2-dimensional knapsack. Although separation and optimiza- tion are equivalent (M. Grotschel et al, 1988) and the existence of an approximation scheme for the separation problem remains open, we are able to design an approximation scheme for the configuration LP since its objective function is unweighed
Keywords
approximation theory; bin packing; computational complexity; geometry; linear programming; randomised algorithms; relaxation theory; set theory; approximation algorithm; bin packing problem; geometric 2-dimensional knapsack; linear programming relaxation; polynomial-time randomized algorithm; set covering problem; vector packing; Approximation algorithms; Clothing industry; Design optimization; Linear programming; Metals industry; Multidimensional systems; Operations research; Polynomials; Steel; Strips;
fLanguage
English
Publisher
ieee
Conference_Titel
Foundations of Computer Science, 2006. FOCS '06. 47th Annual IEEE Symposium on
Conference_Location
Berkeley, CA
ISSN
0272-5428
Print_ISBN
0-7695-2720-5
Type
conf
DOI
10.1109/FOCS.2006.38
Filename
4031404
Link To Document