Bruns Ralf, Dötterl Jeremias, Dunkel Jürgen, Ossowski Sascha
Computer Science Department, Hannover University of Applied Sciences and Arts, 30459 Hannover, Germany.
CETINIA, University Rey Juan Carlos, Móstoles, 28933 Madrid, Spain.
Sensors (Basel). 2023 Jan 5;23(2):614. doi: 10.3390/s23020614.
Mobile crowdsourcing refers to systems where the completion of tasks necessarily requires physical movement of crowdworkers in an on-demand workforce. Evidence suggests that in such systems, tasks often get assigned to crowdworkers who struggle to complete those tasks successfully, resulting in high failure rates and low service quality. A promising solution to ensure higher quality of service is to continuously adapt the assignment and respond to failure-causing events by transferring tasks to better-suited workers who use different routes or vehicles. However, implementing task transfers in mobile crowdsourcing is difficult because workers are autonomous and may reject transfer requests. Moreover, task outcomes are uncertain and need to be predicted. In this paper, we propose different mechanisms to achieve outcome prediction and task coordination in mobile crowdsourcing. First, we analyze different data stream learning approaches for the prediction of task outcomes. Second, based on the suggested prediction model, we propose and evaluate two different approaches for task coordination with different degrees of autonomy: an opportunistic approach for crowdshipping with collaborative, but non-autonomous workers, and a market-based model with autonomous workers for crowdsensing.
移动众包是指那些任务的完成必然需要众包工作者在按需劳动力中进行物理移动的系统。有证据表明,在这类系统中,任务常常被分配给那些难以成功完成任务的众包工作者,从而导致高失败率和低服务质量。一个确保更高服务质量的有前景的解决方案是持续调整任务分配,并通过将任务转移给使用不同路线或车辆的更合适的工作者来应对导致失败的事件。然而,在移动众包中实施任务转移很困难,因为工作者是自主的,可能会拒绝转移请求。此外,任务结果是不确定的,需要进行预测。在本文中,我们提出了不同的机制来实现移动众包中的结果预测和任务协调。首先,我们分析用于任务结果预测的不同数据流学习方法。其次,基于所提出的预测模型,我们提出并评估两种具有不同自主程度的任务协调方法:一种是用于众包配送的机会主义方法,与协作但非自主的工作者合作;另一种是用于众包感知的基于市场的模型,与自主工作者合作。