TopER: Topological Embeddings in Graph Representation Learning
–Neural Information Processing Systems
Graph embeddings play a critical role in graph representation learning, allowing machine learning models to explore and interpret graph-structured data. However, existing methods often rely on opaque, high-dimensional embeddings, limiting interpretability and practical visualization. In this work, we introduce Topological Evolution Rate (TopER), a novel, lowdimensional embedding approach grounded in topological data analysis.
Neural Information Processing Systems
Jun-19-2026, 01:27:20 GMT
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