Computing Partitions with Applications to the Knapsack Problem

Author:

Horowitz Ellis1,Sahni Sartaj2

Affiliation:

1. Computer Science Program, University of Southern Califorina, Los Angles, CA and Cornell University, Ithaca, New York

2. Department of CICS, Unversity of Minnesota, Minneapolis MN and Cornell University, Ithaca, New York

Abstract

Given r numbers s 1 , …, s r , algorithms are investigated for finding all possible combinations of these numbers which sum to M . This problem is a particular instance of the 0-1 unidimensional knapsack problem. All of the usual algorithms for this problem are investigated in terms of both asymptotic computing times and storage requirements, as well as average computing times. We develop a technique which improves all of the dynamic programming methods by a square root factor. Empirical studies indicate this new algorithm to be generally superior to all previously known algorithms. We then show how this improvement can be incorporated into the more general 0-1 knapsack problem obtaining a square root improvement in the asymptotic behavior. A new branch and search algorithm that is significantly faster than the Greenberg and Hegerich algorithm is also presented. The results of extensive empirical studies comparing these knapsack algorithms are given

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Hardware and Architecture,Information Systems,Control and Systems Engineering,Software

Reference15 articles.

1. Transformation of integer programs to knapsack problems;BRAI LI.;Discrete Math,1971

2. Multistage cutting stock problems of two and more dimensions;GILMOR~;Oper. Res.,1965

3. The theory and computation of knapsack functions;GILMORE P. C.;Oper. Re8,1966

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