Abstract: In this study, we propose two novel Adjacency Search Embeddings that are inspired by the theory of identifying s-t minimum cuts: Maximum Adjacency Search (MAS) and Threshold-based Adjacency Search (TAS), which leverage both the node and a subset of its neighborhood to discern a set of nodes well-integrated into higher-order network structures. This serves as context for generating higher-order representations. Our approaches, when used in conjunction with the skip-gram model, exhibit superior effectiveness in comparison to other shallow embedding techniques in tasks such as link prediction and node classification. By incorporating our mechanisms as a preprocessing technique, we show substantial improvements in node classification performance across GNNs like GCN, GraphSage, and Gatv2 on both attributed and non-attributed networks. Furthermore, we substantiate the applicability of our approaches, shedding light on their aptness for specific graph scenarios. Our source code can be accessed through "https://anonymous.4open.science/r/adjacency-embeddings-DC6B".
Submission Length: Long submission (more than 12 pages of main content)
Assigned Action Editor: ~Sinead_Williamson1
Submission Number: 2773
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