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A partitioning scheme for solving the 0-1 knapsack problem
Author(s) -
MF Kruger,
J.M. Hattingh
Publication year - 2014
Publication title -
orion/orion
Language(s) - English
Resource type - Journals
eISSN - 2224-0004
pISSN - 0259-191X
DOI - 10.5784/19-0-179
Subject(s) - knapsack problem , cardinality (data modeling) , mathematics , partition (number theory) , bounded function , upper and lower bounds , branch and bound , mathematical optimization , scheme (mathematics) , continuous knapsack problem , combinatorial optimization , cutting stock problem , space (punctuation) , complement (music) , optimization problem , discrete mathematics , combinatorics , computer science , mathematical analysis , biochemistry , chemistry , complementation , gene , data mining , phenotype , operating system
The application of valid inequalities to provide relaxations which can produce tight bounds, is now common practice in Combinatorial Optimisation. This paper attempts to complement current theoretical investigations in this regard. We experimentally search for "valid" equalities which have the potential of strengthening the problem's formulation. Recently, Martello and Toth included cardinality constraints to derive tight upper bounds for the 0-1 Knapsack Problem. Encouraged by their results, we partition the search space by using equality cardinality constraints. Instead of solving the original problem, an equivalent problem, which consists of one or more 0-1 Knapsack Problem with an exact cardinality bound, is solved. By explicitly including a bound on the cardinality, one is able to reduce the size of each subproblem and compute tight upper bounds. Good feasible solutions found along the way are employed to reduce the computational effort by reducing the number of trees searched and the size of the subsequent search trees. We give a brief description of two Lagrangian-based Branch-and-Bound algorithms proposed in Kruger for solving the exact cardinality bounded subproblems and report on results of numerical experiments with a sequential implementation. Implications for and strategiestowards parallel implementation are also given

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