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An Ensemble of Epoch-wise Empirical Bayes for Few-shot Learning

About

Few-shot learning aims to train efficient predictive models with a few examples. The lack of training data leads to poor models that perform high-variance or low-confidence predictions. In this paper, we propose to meta-learn the ensemble of epoch-wise empirical Bayes models (E3BM) to achieve robust predictions. "Epoch-wise" means that each training epoch has a Bayes model whose parameters are specifically learned and deployed. "Empirical" means that the hyperparameters, e.g., used for learning and ensembling the epoch-wise models, are generated by hyperprior learners conditional on task-specific data. We introduce four kinds of hyperprior learners by considering inductive vs. transductive, and epoch-dependent vs. epoch-independent, in the paradigm of meta-learning. We conduct extensive experiments for five-class few-shot tasks on three challenging benchmarks: miniImageNet, tieredImageNet, and FC100, and achieve top performance using the epoch-dependent transductive hyperprior learner, which captures the richest information. Our ablation study shows that both "epoch-wise ensemble" and "empirical" encourage high efficiency and robustness in the model performance.

Yaoyao Liu, Bernt Schiele, Qianru Sun• 2019

Related benchmarks

TaskDatasetResultRank
Few-shot classificationminiImageNet standard (test)
5-way 1-shot Acc54.6
138
5-way Image ClassificationtieredImageNet 5-way (test)
1-shot Acc71.2
117
Few-shot classificationMiniImagenet
5-way 5-shot Accuracy81
98
5-way ClassificationtieredImageNet (test)
Accuracy85.82
66
5-way Image ClassificationMini-Imagenet (test)
Top-1 Acc80.29
46
5-way Few-shot ClassificationminiImageNet 5-way (test)
1-shot Acc63.8
39
5-way Few-shot Classificationtiered-ImageNet--
39
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