Persistent Homology and Graphs Representation LearningDownload PDF

Anonymous

08 Mar 2021 (modified: 05 May 2023)ICLR 2021 Workshop GTRL Blind SubmissionReaders: Everyone
Keywords: Graph Representation Learning, Persistent Homology, Graph Autoencoder
Abstract: This article aims to study the topological invariant properties encoded in node graph representational embeddings by utilizing tools available in persistent homology. Specifically, given a node embedding representation algorithm, we consider the case when these embeddings are real-valued. By viewing these embeddings as scalar functions on a domain of interest, we can utilize the tools available in persistent homology to study the topological information encoded in these representations. Our construction effectively defines a unique persistence-based graph descriptor, on both the graph and node levels, for every node representation algorithm. To demonstrate the effectiveness of the proposed method, we study the topological descriptors induced by DeepWalk, Node2Vec and Diff2Vec.
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