Feb. 1, 2024, 12:45 p.m. | Ayush Garg

cs.LG updates on arXiv.org arxiv.org

Recently, Transformers for graph representation learning have become increasingly popular, achieving state-of-the-art performance on a wide-variety of datasets, either alone or in combination with message-passing graph neural networks (MP-GNNs). Infusing graph inductive-biases in the innately structure-agnostic transformer architecture in the form of structural or positional encodings (PEs) is key to achieving these impressive results. However, designing such encodings is tricky and disparate attempts have been made to engineer such encodings including Laplacian eigenvectors, relative random-walk probabilities (RRWP), spatial encodings, centrality …

architecture art become biases combination cs.ai cs.lg datasets form gnns graph graph neural networks graph representation inductive key networks neural networks performance popular representation representation learning state transformer transformer architecture transformers

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