Computational Team Assembly with Fairness Constraints
June 12, 2023 Β· Declared Dead Β· π Symposium on Advances in Databases and Information Systems
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Authors
Rodrigo Borges, Otto Sahlgrens, Sami Koivunen, Kostas Stefanidis, Thomas Olsson, Arto Laitinen
arXiv ID
2306.07023
Category
cs.DB: Databases
Citations
2
Venue
Symposium on Advances in Databases and Information Systems
Last Checked
4 months ago
Abstract
Team assembly is a problem that demands trade-offs between multiple fairness criteria and computational optimization. We focus on four criteria: (i) fair distribution of workloads within the team, (ii) fair distribution of skills and expertise regarding project requirements, (iii) fair distribution of protected classes in the team, and (iv) fair distribution of the team cost among protected classes. For this problem, we propose a two-stage algorithmic solution. First, a multi-objective optimization procedure is executed and the Pareto candidates that satisfy the project requirements are selected. Second, N random groups are formed containing combinations of these candidates, and a second round of multi-objective optimization is executed, but this time for selecting the groups that optimize the team-assembly criteria.
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