GENIUS: A Novel Solution for Subteam Replacement with Clustering-based Graph Neural Network
Chuxuan Hu, Qinghai Zhou, Hanghang Tong

TL;DR
This paper introduces GENIUS, a clustering-based graph neural network framework that improves subteam replacement by capturing intrinsic team features and significantly enhances efficiency and effectiveness over prior graph kernel methods.
Contribution
The paper proposes GENIUS, a novel GNN framework with self-supervised training and unsupervised clustering for flexible, efficient, and accurate subteam replacement.
Findings
Significantly improves team similarity in replacements.
Achieves over 600 times faster computation.
Effectively captures intrinsic team features.
Abstract
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…
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Taxonomy
TopicsKnowledge Management and Sharing · Technology Adoption and User Behaviour · Complex Network Analysis Techniques
MethodsGraph Neural Network
