graph2vec: Learning Distributed Representations of Graphs
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Abstract
Recent works on representation learning for graph structured data predominantly focus on learning distributed representations of graph substructures such as nodes and subgraphs. However, many graph analytics tasks such as graph classification and clustering require representing entire graphs as fixed length feature vectors. While the aforementioned approaches are naturally unequipped to learn such representations, graph kernels remain as the most effective way of obtaining them. However, these graph kernels use handcrafted features (e.g., shortest paths, graphlets, etc.) and hence are hampered by problems such as poor generalization. To address this limitation, in this work, we propose a neural embedding…
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6Topics & keywords
Topics
Keywords
- Computer science
- Feature learning
- Cluster analysis
- Theoretical computer science
- Graph
- Embedding
- Artificial intelligence
- Graph embedding
UN Sustainable Development Goals
- No poverty
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