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, we design a novel low-complexity CMCS recruitment approach relying on Graph Neural Networks (GNNs), specifically graph embedding and clustering techniques, to shrink the workers' search space and afterwards, exploiting a meta-heuristic genetic algorithm to select appropriate workers. Simulation results applied on a real-world dataset illustrate the performance of both proposed CMCS recruitment approaches. It is shown that our proposed low-complexity GNN-based recruitment algorithm achieves close performances to those of the baseline ILP with significant computational time saving and ability to operate on large-scale mobile crowdsourcing platforms. It is also shown that compared to the leader-based strategy, the platform-based strategy recruits a more skilled team but with lower SN relationships and higher cost.
翻译:在本文件中,我们调查了两个不同的CMCS招聘战略,允许任务申请者组建社会联系和技术熟练工人团队:i)基于平台的战略,平台利用自己关于工人的知识组建团队;ii)基于领导的战略,平台根据自己对社交网络(SNW)的了解,指定一个适合团队的团体领导,从内部网络(SNW)中招聘自己的合适团队;我们首先将招聘设计成一个Integer 大型线性方案(ILP),根据四种基于模糊逻辑的标准,优化组建团队:专业知识水平、社会关系强度、招聘成本和招聘者信心水平。为了应对NP-硬性,我们设计了一个新的低兼容性 CMCS招聘方法,依靠基于图形的互联网网络(GNNS),特别是基于嵌入和集群的技术,以缩小员工的搜索空间和之后,同时利用一种基于精度大型在线线性线性线性线性大型程序(ILP),根据四种基于模糊逻辑的标准标准组建团队:即专门知识、社会关系强度、招聘成本、招聘成本和招聘者信心水平水平。Simal-hurtical lical lical realalalalalalal-comstration orcustration laut the the the the the the the laut the laut the laut the lax the laut the laut the lax the laut the laut the laut the laut the latical