The Guided Team-Partitioning Problem: Definition, Complexity, and Algorithm
Sanaz Bahargam, Theodoros Lappas, Evimaria Terzi

TL;DR
This paper introduces the Guided Team-Partitioning (GTP) problem, extending team formation to partition entire populations into teams with centroids close to targets, addressing complexity and proposing heuristics.
Contribution
The paper defines the GTP problem, proves its NP-hardness, and develops heuristic algorithms for practical solutions in team partitioning scenarios.
Findings
GTP is NP-hard to solve and approximate.
Heuristic algorithms perform effectively on real and synthetic data.
The formulation allows controlled team composition in practical applications.
Abstract
A long line of literature has focused on the problem of selecting a team of individuals from a large pool of candidates, such that certain constraints are respected, and a given objective function is maximized. Even though extant research has successfully considered diverse families of objective functions and constraints, one of the most common limitations is the focus on the single-team paradigm. Despite its well-documented applications in multiple domains, this paradigm is not appropriate when the team-builder needs to partition the entire population into multiple teams. Team-partitioning tasks are very common in an educational setting, in which the teacher has to partition the students in her class into teams for collaborative projects. The task also emerges in the context of organizations, when managers need to partition the workforce into teams with specific properties to tackle…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · Auction Theory and Applications · Data Quality and Management
