Node Representation Learning
Node representation learning aims to encode graph nodes into low-dimensional vector embeddings that capture both node attributes and their relationships within the graph structure. Current research emphasizes improving the quality and robustness of these embeddings, focusing on techniques like contrastive learning, graph transformers, and variational methods, often addressing challenges posed by heterophily, long-tailed distributions, and scalability to massive graphs. These advancements are crucial for improving performance in downstream tasks such as node classification, link prediction, and anomaly detection, with significant implications for various fields including social network analysis, bioinformatics, and cybersecurity.
Papers
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