Learning Attentive Attribute-Aware Node Embeddings in Dynamic Environments
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Abstract
Learning node embeddings is fundamentally essential for numerous applications , such as link prediction and node classification. The purpose of node embedding techniques is to learn a low-dimensional representation for each node in the graph. Many existing node representation learning methods for dynamic attributed graphs focus on preserving the temporal proximity of the nodes with relatively shallow models. However, real-life graphs are complex, and usually exhibit evolutionary patterns of node attributes and graph structure. Therefore, the current state-of-the-art models fail to capture the information in the dynamic attributed graphs and settle for sub-optimal results. In this paper, we propose a novel model for embedding nodes in dynamic attributed graphs that captures the full extent of all relevant node information and the graph interrelations as well as graph evolutionary patterns. During model training, attribute-aware node embedding is learned using both graph and node properties in a dynamic context. Experiments demonstrate that our proposed method is superior to the state-of-the-art models in link prediction tasks. In addition, it introduces a novel way for learning richer representations by fully exploiting node attributes, graph structure, and evolutionary patterns in dynamic attributed graphs.
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