论文标题
合作移动众包系统的最佳团队招聘策略
Optimal Team Recruitment Strategies for Collaborative Mobile Crowdsourcing Systems
论文作者
论文摘要
移动设备的广泛传播使新的创新范式称为移动众包(MCS),该概念是允许实体,例如个人或地方当局,雇用工人来帮助互联人员人群,执行任务或服务。一些复杂的任务需要多个工人的协作,以确保其成功完成。在这种情况下,任务请求者需要雇用一组社会联系和协作的工人,同时,这些工人具有足够的技能来完成任务。在本文中,我们为协作MCS框架制定了两种招聘策略,其中,根据四个不同的标准组成虚拟团队:专业知识水平,社会关系实力,招聘成本和招聘者的信心水平。第一个提出的策略是一种基于平台的方法,它利用平台知识组成团队。第二种是基于领导者的方法,该方法使用团队成员对社交网络(SN)邻居的了解来指定招募合适团队的小组领导者。两种方法均以整数线性程序进行建模,从而导致最佳的团队形成。实验结果表明,在改变成员SN边缘学位时,两个虚拟团队分组策略之间的性能权衡。与基于领导者的战略相比,基于平台的战略招募了一个更熟练的团队,但SN关系较低,成本更高。
The wide spread of mobile devices has enabled a new paradigm of innovation called Mobile Crowdsourcing (MCS) where the concept is to allow entities, e.g., individuals or local authorities, to hire workers to help from the crowd of connected people, to execute a task or service. Some complex tasks require the collaboration of multiple workers to ensure its successful completion. In this context, the task requester needs to hire a group of socially connected and collaborative workers that, at the same time, have sufficient skills to accomplish the task. In this paper, we develop two recruitment strategies for collaborative MCS frameworks in which, virtual teams are formed according to four different criteria: level of expertise, social relationship strength, recruitment cost, and recruiter's confidence level. The first proposed strategy is a platform-based approach which exploits the platform knowledge to form the team. The second one is a leader-based approach that uses team members' knowledge about their social network (SN) neighbors to designate a group leader that recruits its suitable team. Both approaches are modeled as integer linear programs resulting in optimal team formation. Experimental results show a performance trade-off between the two virtual team grouping strategies when varying the members SN edge degree. Compared to the leader-based strategy, the platform-based strategy recruits a more skilled team but with lower SN relationships and higher cost.