Few-Shot Learning with Graph Neural Networks
About
We propose to study the problem of few-shot learning with the prism of inference on a partially observed graphical model, constructed from a collection of input images whose label can be either observed or not. By assimilating generic message-passing inference algorithms with their neural-network counterparts, we define a graph neural network architecture that generalizes several of the recently proposed few-shot learning models. Besides providing improved numerical performance, our framework is easily extended to variants of few-shot learning, such as semi-supervised or active learning, demonstrating the ability of graph-based models to operate well on 'relational' tasks.
Victor Garcia, Joan Bruna• 2017
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Few-shot classification | tieredImageNet (test) | -- | 282 | |
| Few-shot Image Classification | Mini-Imagenet (test) | Accuracy66.41 | 235 | |
| 5-way Classification | miniImageNet (test) | Accuracy66.41 | 231 | |
| Few-shot classification | Mini-ImageNet | 1-shot Acc50.33 | 175 | |
| Few-shot classification | CUB (test) | Accuracy62.25 | 145 | |
| Few-shot classification | miniImageNet standard (test) | 5-way 1-shot Acc50.33 | 138 | |
| Few-shot classification | miniImageNet (test) | Accuracy80.74 | 120 | |
| Few-shot classification | Mini-Imagenet (test) | -- | 113 | |
| Few-shot classification | MiniImagenet | 5-way 5-shot Accuracy66.41 | 98 | |
| 5-way Few-shot Classification | CUB | 5-shot Acc63.69 | 95 |
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