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Instance Credibility Inference for Few-Shot Learning

About

Few-shot learning (FSL) aims to recognize new objects with extremely limited training data for each category. Previous efforts are made by either leveraging meta-learning paradigm or novel principles in data augmentation to alleviate this extremely data-scarce problem. In contrast, this paper presents a simple statistical approach, dubbed Instance Credibility Inference (ICI) to exploit the distribution support of unlabeled instances for few-shot learning. Specifically, we first train a linear classifier with the labeled few-shot examples and use it to infer the pseudo-labels for the unlabeled data. To measure the credibility of each pseudo-labeled instance, we then propose to solve another linear regression hypothesis by increasing the sparsity of the incidental parameters and rank the pseudo-labeled instances with their sparsity degree. We select the most trustworthy pseudo-labeled instances alongside the labeled examples to re-train the linear classifier. This process is iterated until all the unlabeled samples are included in the expanded training set, i.e. the pseudo-label is converged for unlabeled data pool. Extensive experiments under two few-shot settings show that our simple approach can establish new state-of-the-arts on four widely used few-shot learning benchmark datasets including miniImageNet, tieredImageNet, CIFAR-FS, and CUB. Our code is available at: https://github.com/Yikai-Wang/ICI-FSL

Yikai Wang, Chengming Xu, Chen Liu, Li Zhang, Yanwei Fu• 2020

Related benchmarks

TaskDatasetResultRank
Few-shot classificationtieredImageNet (test)--
282
Few-shot Image ClassificationMini-Imagenet (test)--
235
Few-shot classificationMini-ImageNet
1-shot Acc66.8
175
5-way Few-shot ClassificationMiniImagenet
Accuracy (5-shot)80.11
150
Few-shot classificationCUB (test)--
145
5-way Few-shot ClassificationCUB
5-shot Acc92.53
95
Few-shot Image ClassificationtieredImageNet--
90
Image ClassificationMini-Imagenet (test)
Acc (5-shot)58.8
75
Few-shot Image Classificationmini-ImageNet K=20 (test)
Accuracy70.9
56
5-way Few-shot ClassificationtieredImageNet
Accuracy (1-shot)84.01
49
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