论文标题
FERN:公平团队的互惠协作学习
FERN: Fair Team Formation for Mutually Beneficial Collaborative Learning
论文作者
论文摘要
对于开源社区项目,远程工作平台以及在线教育系统中的大量应用程序,自动团队组成变得越来越重要。尤其是后一种情况,提出了针对教育领域的重大挑战。实际上,组合学生的目标远远超过了成功完成特定任务的更多。它需要确保团队中的所有成员都从合作工作中受益,同时还确保参与者在受保护的属性(例如种族和性别)方面不会受到歧视。为了实现这些目标,这项工作介绍了Fern,这是一种公平的团队组成方法,促进了互惠互利的同伴学习,这是由受保护的团体公平性决定的,这是协作学习中机会平等。我们将问题提出为多目标离散优化问题。我们表明这个问题是NP-HARD,并提出了一种启发式爬山算法。针对众所周知的团队形成技术,对合成和现实世界数据集进行了广泛的实验,显示了该方法的有效性。
Automated Team Formation is becoming increasingly important for a plethora of applications in open source community projects, remote working platforms, as well as online educational systems. The latter case, in particular, poses significant challenges that are specific to the educational domain. Indeed, teaming students aims to accomplish far more than the successful completion of a specific task. It needs to ensure that all members in the team benefit from the collaborative work, while also ensuring that the participants are not discriminated with respect to their protected attributes, such as race and gender. Towards achieving these goals, this work introduces FERN, a fair team formation approach that promotes mutually beneficial peer learning, dictated by protected group fairness as equality of opportunity in collaborative learning. We formulate the problem as a multi-objective discrete optimization problem. We show this problem to be NP-hard and propose a heuristic hill-climbing algorithm. Extensive experiments on both synthetic and real-world datasets against well-known team formation techniques show the effectiveness of the proposed method.