English

Assigning tasks to agents under time conflicts: a parameterized complexity approach

Discrete Mathematics 2020-09-01 v2 Computational Complexity

Abstract

We consider the problem of assigning tasks to agents under time conflicts, with applications also to frequency allocations in point-to-point wireless networks. In particular, we are given a set VV of nn agents, a set EE of mm tasks, and kk different time slots. Each task can be carried out in one of the kk predefined time slots, and can be represented by the subset eEe\subseteq E of the involved agents. Since each agent cannot participate to more than one task simultaneously, we must find an allocation that assigns non-overlapping tasks to each time slot. Being the number of slots limited by kk, in general it is not possible to executed all the possible tasks, and our aim is to determine a solution maximizing the overall social welfare, that is the number of executed tasks. We focus on the restriction of this problem in which the number of time slots is fixed to be k=2k=2, and each task is performed by exactly two agents, that is e=2|e|=2. In fact, even under this assumptions, the problem is still challenging, as it remains computationally difficult. We provide parameterized complexity results with respect to several reasonable parameters, showing for the different cases that the problem is fixed-parameter tractable or it is paraNP-hard.

Keywords

Cite

@article{arxiv.1904.09246,
  title  = {Assigning tasks to agents under time conflicts: a parameterized complexity approach},
  author = {Alessandro Aloisio and Vahan Mkrtchyan},
  journal= {arXiv preprint arXiv:1904.09246},
  year   = {2020}
}

Comments

31 pages, 3 figures

R2 v1 2026-06-23T08:44:52.252Z