2013
DOI: 10.1007/978-3-642-36694-9_2
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All-or-Nothing Generalized Assignment with Application to Scheduling Advertising Campaigns

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Cited by 7 publications
(20 citation statements)
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“…On the other hand, Jansen et al [9] also showed that unless the Exponential Time Hypothesis fails, there is no approximation scheme which has a running time of 2 o(1/ ) + n O (1) for the multiple knapsack problem even if there are only two knapsacks (of the unit capacity). Thus, allowing the number of knapsacks m to be part of the input as well as allowing each knapsack to have a distinct capacity does not essentially make the problem harder in the sense that the 2…”
Section: O(logmentioning
confidence: 99%
See 1 more Smart Citation
“…On the other hand, Jansen et al [9] also showed that unless the Exponential Time Hypothesis fails, there is no approximation scheme which has a running time of 2 o(1/ ) + n O (1) for the multiple knapsack problem even if there are only two knapsacks (of the unit capacity). Thus, allowing the number of knapsacks m to be part of the input as well as allowing each knapsack to have a distinct capacity does not essentially make the problem harder in the sense that the 2…”
Section: O(logmentioning
confidence: 99%
“…We hope the study in this line will help reveal the impact of these parameters. Our problem is closely related to the all-or-nothing generalized assignment problem (AGAP) [1]. The AGAP problem also asks for a most profitable packing of n groups of items into m identical knapsacks, where the profit of a group is defined to be the total profit of items in the group, and is achieved only if every item of this group is packed.…”
Section: O(logmentioning
confidence: 99%
“…Our approach provides a simpler alternative MOIP formulation that can be used to generate provably Pareto‐optimal solutions for small‐ to medium‐sized problems, and possibly large‐scale problems that can be decomposed into smaller subproblems. However, we also hope that our formulation can be used as a basis for alternative heuristics, possibly with provable performance guarantees similar to approximation algorithms (e.g., see Williamson and Shmoys, ; Adany et al., ), that can be used for large‐scale problems.…”
Section: Multiobjective Optimization Formulations In Tv Advertisingmentioning
confidence: 99%
“…For a special case of GMKP, when all knapsack capacities are equal and the heaviest group weighs at most 2/3 of the total capacity, parameterized-approximation algorithms were proposed by Chen and Zhang [2018]. Adany et al [2016] proposed a PTAS for a generalized assignment problem with grouped items that has additional constraints: there is a limit on the number of items per group, and knapsacks can accommodate at most one item from each group. The algorithms proposed by Chen and Zhang [2018] and Adany et al [2016] guarantee feasiblity while sacrificing rewards; the algorithms proposed in this paper sacrifice feasibility (bounded by a maximum exceeded knapsack capacity) while generating solutions achieving the optimal reward (in relation to the original GMKP).…”
Section: Introductionmentioning
confidence: 99%