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Shot in the Dark: Few-Shot Learning with No Base-Class Labels

机译:在黑暗中射击:几秒钟学习没有基础类标签

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Few-shot learning aims to build classifiers for new classes from a small number of labeled examples and is commonly facilitated by access to examples from a distinct set of ‘base classes’. The difference in data distribution between the test set (novel classes) and the base classes used to learn an inductive bias often results in poor generalization on the novel classes. To alleviate problems caused by the distribution shift, previous research has explored the use of unlabeled examples from the novel classes, in addition to labeled examples of the base classes, which is known as the transductive setting. In this work, we show that, surprisingly, off-the-shelf self-supervised learning outperforms transductive few-shot methods by 3.9% for 5-shot accuracy on miniImageNet without using any base class labels. This motivates us to examine more carefully the role of features learned through self-supervision in few-shot learning. Comprehensive experiments are conducted to compare the transferability, robustness, efficiency, and the complementarity of supervised and self-supervised features.
机译:很少拍摄的学习旨在从少数标记的例子中建立新类的分类器,通常通过从一个不同的'基类'的示例访问示例而促进。测试集(新类别)与用于学习感应偏差的基类之间的数据分布的差异导致新颖类别的普遍性差。为了减轻分配转变引起的问题,除了被称为转导的基础类别的标记示例之外,还探讨了从新型类别中使用未标记的实例的使用。在这项工作中,我们展示了,令人惊讶的是,伪造的自我监督学习优于MiniimAgenet的5次射门精度的转换少量射击方法,而不使用任何基类标签。这使我们能够在几次拍摄学习中通过自我监督来仔细检查功能的作用。进行综合实验以比较监督和自我监督特征的可转让性,稳健性,效率和互补性。

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