LGSIOct 21, 2022

Graph Few-shot Learning with Task-specific Structures

arXiv:2210.12130v136 citationsh-index: 24Has Code
Originality Incremental advance
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This work addresses the challenge of adapting graph structures to different class sets in few-shot learning scenarios, offering a domain-specific improvement for graph-based machine learning.

The paper tackles the problem of graph few-shot learning by proposing a framework that learns task-specific graph structures for each meta-task to improve node classification performance, achieving state-of-the-art results on five datasets.

Graph few-shot learning is of great importance among various graph learning tasks. Under the few-shot scenario, models are often required to conduct classification given limited labeled samples. Existing graph few-shot learning methods typically leverage Graph Neural Networks (GNNs) and perform classification across a series of meta-tasks. Nevertheless, these methods generally rely on the original graph (i.e., the graph that the meta-task is sampled from) to learn node representations. Consequently, the graph structure used in each meta-task is identical. Since the class sets are different across meta-tasks, node representations should be learned in a task-specific manner to promote classification performance. Therefore, to adaptively learn node representations across meta-tasks, we propose a novel framework that learns a task-specific structure for each meta-task. To handle the variety of nodes across meta-tasks, we extract relevant nodes and learn task-specific structures based on node influence and mutual information. In this way, we can learn node representations with the task-specific structure tailored for each meta-task. We further conduct extensive experiments on five node classification datasets under both single- and multiple-graph settings to validate the superiority of our framework over the state-of-the-art baselines. Our code is provided at https://github.com/SongW-SW/GLITTER.

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