论文标题
使用深度代表性学习在图表上进行建模团队的绩效
Modeling Teams Performance Using Deep Representational Learning on Graphs
论文作者
论文摘要
大多数人类活动都需要在正式或非正式团队内部和跨部队进行合作。我们对团队所花费的协作努力与他们的表现如何相关的理解仍然是一个辩论问题。团队合作导致了一个高度相互联系的生态系统,这些生态系统可能与团队成员和其他团队进行互动执行任务。为了解决这个问题,我们提出了一个图形神经网络模型,旨在预测团队的性能,同时确定确定这种结果的驱动程序。特别是,该模型基于三个架构渠道:拓扑,中心性和上下文,它们捕获了不同因素可能会塑造团队的成功。我们将模型具有两种注意机制,以提高模型性能并允许解释性。第一种机制允许查明团队内部的关键成员。第二种机制使我们能够量化三个驱动程序在确定结果绩效方面的贡献。我们在广泛的域上测试模型性能,其表现优于大多数经典和神经基线的模型。此外,我们包括专门设计的合成数据集,以验证该模型如何删除我们的模型胜过基线的预期属性。
The large majority of human activities require collaborations within and across formal or informal teams. Our understanding of how the collaborative efforts spent by teams relate to their performance is still a matter of debate. Teamwork results in a highly interconnected ecosystem of potentially overlapping components where tasks are performed in interaction with team members and across other teams. To tackle this problem, we propose a graph neural network model designed to predict a team's performance while identifying the drivers that determine such an outcome. In particular, the model is based on three architectural channels: topological, centrality, and contextual which capture different factors potentially shaping teams' success. We endow the model with two attention mechanisms to boost model performance and allow interpretability. A first mechanism allows pinpointing key members inside the team. A second mechanism allows us to quantify the contributions of the three driver effects in determining the outcome performance. We test model performance on a wide range of domains outperforming most of the classical and neural baselines considered. Moreover, we include synthetic datasets specifically designed to validate how the model disentangles the intended properties on which our model vastly outperforms baselines.