Low Complexity Recruitment for Collaborative Mobile Crowdsourcing Using Graph Neural Networks
Aymen Hamrouni, Hakim Ghazzai, Turki Alelyani, Yehia Massoud

TL;DR
This paper introduces a low-complexity GNN-based recruitment method for collaborative mobile crowdsourcing, achieving near-optimal team formation with reduced computational effort on large-scale platforms.
Contribution
It proposes a novel GNN-based approach to efficiently form skilled teams in CMCS, reducing complexity while maintaining performance compared to ILP solutions.
Findings
GNN approach achieves similar performance to ILP with less computation.
Platform-based strategy recruits more skilled but costlier teams.
GNN method scales effectively to large crowdsourcing datasets.
Abstract
Collaborative Mobile crowdsourcing (CMCS) allows entities, e.g., local authorities or individuals, to hire a team of workers from the crowd of connected people, to execute complex tasks. In this paper, we investigate two different CMCS recruitment strategies allowing task requesters to form teams of socially connected and skilled workers: i) a platform-based strategy where the platform exploits its own knowledge about the workers to form a team and ii) a leader-based strategy where the platform designates a group leader that recruits its own suitable team given its own knowledge about its Social Network (SN) neighbors. We first formulate the recruitment as an Integer Linear Program (ILP) that optimally forms teams according to four fuzzy-logic-based criteria: level of expertise, social relationship strength, recruitment cost, and recruiter's confidence level. To cope with NP-hardness,…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · Advanced Graph Neural Networks · Privacy-Preserving Technologies in Data
