Abstract:
To address the issue of label sparsity in heterogeneous graphs (HGs), heterogeneous graph few-shot learning (HGFL) has recently emerged. HGFL aims to extract meta-knowled...Show MoreMetadata
Abstract:
To address the issue of label sparsity in heterogeneous graphs (HGs), heterogeneous graph few-shot learning (HGFL) has recently emerged. HGFL aims to extract meta-knowledge from source HGs with rich-labeled data and transfers it to a target HG, facilitating learning new classes with few-labeled training data and improving predictions on unlabeled testing data. Existing methods typically assume the same distribution across the source HG, training data, and testing data. However, in practice, distribution shifts in HGFL are inevitable due to (1) the scarcity of source HGs that match the target HG's distribution, and (2) the unpredictable data generation mechanism of the target HG. Such distribution shifts can degrade the performance of existing methods, leading to a novel problem of out-of-distribution (OOD) generalization in HGFL. To address this challenging problem, we propose COHF, a Causal OOD Heterogeneous graph Few-shot learning model. In COHF, we first adopt a bottom-up data generative perspective to identify the invariance principle for OOD generalization. Then, based on this principle, we design a novel variational autoencoder-based heterogeneous graph neural network (VAE-HGNN) to mitigate the impact of distribution shifts. Finally, we propose a novel meta-learning framework that incorporates VAE-HGNN to effectively transfer meta-knowledge in OOD environments. Extensive experiments on seven real-world datasets have demonstrated the superior performance of COHF over the state-of-the-art methods.
Published in: IEEE Transactions on Knowledge and Data Engineering ( Volume: 37, Issue: 4, April 2025)
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- IEEE Keywords
- Index Terms
- Representation Learning ,
- Few-shot Learning ,
- Heterogeneous Graph ,
- Training Data ,
- Test Data ,
- Domain Shift ,
- Real-world Datasets ,
- Causal Model ,
- Graph Neural Networks ,
- Invariance Principle ,
- Knowledge Transfer ,
- Multilayer Perceptron ,
- Trainable Parameters ,
- Graph Structure ,
- Target Domain ,
- Node Features ,
- Variational Autoencoder ,
- Types Of Nodes ,
- Source Domain ,
- Support Set ,
- High-level Semantics ,
- Node Labels ,
- Heterogeneous Information ,
- Factorial Invariance ,
- Node Representations ,
- Types Of Edges ,
- Node Classification ,
- Node Embeddings ,
- Learnable Weight Matrix ,
- Query Set
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Representation Learning ,
- Few-shot Learning ,
- Heterogeneous Graph ,
- Training Data ,
- Test Data ,
- Domain Shift ,
- Real-world Datasets ,
- Causal Model ,
- Graph Neural Networks ,
- Invariance Principle ,
- Knowledge Transfer ,
- Multilayer Perceptron ,
- Trainable Parameters ,
- Graph Structure ,
- Target Domain ,
- Node Features ,
- Variational Autoencoder ,
- Types Of Nodes ,
- Source Domain ,
- Support Set ,
- High-level Semantics ,
- Node Labels ,
- Heterogeneous Information ,
- Factorial Invariance ,
- Node Representations ,
- Types Of Edges ,
- Node Classification ,
- Node Embeddings ,
- Learnable Weight Matrix ,
- Query Set
- Author Keywords