Subteam replacement is defined as finding the optimal candidate set of people who can best function as an unavailable subset of members (i.e., subteam) for certain reasons (e.g., conflicts of interests, employee churn), given a team of people embedded in a social network working on the same task. Prior investigations on this problem incorporate graph kernel as the optimal criteria for measuring the similarity between the new optimized team and the original team. However, the increasingly abundant social networks reveal fundamental limitations of existing methods, including (1) the graph kernel-based approaches are powerless to capture the key intrinsic correlations among node features, (2) they generally search over the entire network for every member to be replaced, making it extremely inefficient as the network grows, and (3) the requirement of equal-sized replacement for the unavailable subteam can be inapplicable due to limited hiring budget. In this work, we address the limitations in the state-of-the-art for subteam replacement by (1) proposing GENIUS, a novel clustering-based graph neural network (GNN) framework that can capture team network knowledge for flexible subteam replacement, and (2) equipping the proposed GENIUS with self-supervised positive team contrasting training scheme to improve the team-level representation learning and unsupervised node clusters to prune candidates for fast computation. Through extensive empirical evaluations, we demonstrate the efficacy of the proposed method (1) effectiveness: being able to select better candidate members that significantly increase the similarity between the optimized and original teams, and (2) efficiency: achieving more than 600 times speed-up in average running time.
翻译:Subteam 替换的定义是,找到最佳候选人,这些人可以最佳地作为因某些原因(例如利益冲突、雇员热量),由于某些原因(例如,利益冲突、雇员热量),作为无法找到的成员(即子小组)的一组人,在社会网络中嵌入一队人,从事同一任务。以前对该问题的调查将图形内核作为衡量新优化小组和原小组之间相似性的最佳标准。然而,日益丰富的社会网络揭示了现有方法的根本局限性,包括:(1) 基于图形内核的方法无法捕捉节点各特点之间关键的内在关联;(2)他们一般地对整个网络进行搜索,以便替换每个成员,随着网络的扩大而使其效率极低;(3)由于有限雇用预算,对无法使用的子小组进行同等规模的替换的要求可能不适用。在这项工作中,我们通过提议(1) 采用新的基于组合的速率网络(GNNN) 框架来获取团队网络知识,以便进行灵活的子小组替换;(2) 以更精确的进度方式进行我们所拟议的团队的快速的对比;(2) 以更精确的方式,以更精确的方式,使拟议的GEUS 团队的成员进行更精确的学习。