Title of article
Greedy approaches for a class of nonlinear Generalized Assignment Problems Original Research Article
Author/Authors
Thomas C. Sharkey، نويسنده , , H. Edwin Romeijn، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
14
From page
559
To page
572
Abstract
The traditional Generalized Assignment Problem (GAP) seeks an assignment of customers to facilities that minimizes the sum of the assignment costs while respecting the capacity of each facility. We consider a nonlinear GAP where, in addition to the assignment costs, there is a nonlinear cost function associated with each facility whose argument is a linear function of the customers assigned to the facility. We propose a class of greedy algorithms for this problem that extends a family of greedy algorithms for the GAP. The effectiveness of these algorithms is based on our analysis of the continuous relaxation of our problem. We show that there exists an optimal solution to the continuous relaxation with a small number of fractional variables and provide a set of dual multipliers associated with this solution. This set of dual multipliers is then used in the greedy algorithm. We provide conditions under which our greedy algorithm is asymptotically optimal and feasible under a stochastic model of the parameters.
Keywords
Greedy heuristics , Asymptotic analysis , Nonlinear Generalized Assignment Problem
Journal title
Discrete Applied Mathematics
Serial Year
2010
Journal title
Discrete Applied Mathematics
Record number
887367
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