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Skip Residual Pairwise Networks With Learnable Comparative Functions for Few-Shot Learning

机译:跳过具有可学习比较功能的残余成对网络,用于几次拍摄学习

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In this work we consider the ubiquitous Siamese network architecture and hypothesize that having an end-to-end learnable comparative function instead of an arbitrarily fixed one used commonly in practice (such as dot product) would allow the network to learn a final representation more suited to the task at hand and generalize better with very small quantities of data. Based on this we propose Skip Residual Pairwise Networks (SRPN) for few-shot learning based on residual Siamese networks. We validate our hypothesis by evaluating the proposed model for few-shot learning on Omniglot and mini-Imagenet datasets. Our model outperforms the residual Siamese design of equal depth and parameters. We also show that our model is competitive with state-of-the-art meta-learning based methods for few-shot learning on the challenging mini-Imagenet dataset whilst being a much simpler design, obtaining 54.4% accuracy on the five-way few-shot learning task with only a single example per class and over 70% accuracy with five examples per class. We further observe that the network weights in our model are much smaller compared to an equivalent residual Siamese Network under similar regularization, thus validating our hypothesis that our model design allows for better generalization. We also observe that our asymmetric, non-metric SRPN design automatically learns to approximate natural metric learning priors such as a symmetry and the triangle inequality.
机译:在这项工作中,我们考虑普遍存在的暹别网络架构并假设具有端到端学习的比较函数而不是在实践中通常使用的任意固定的函数(例如DOT产品)将允许网络学习更加适合的最终代表到手头的任务并通过非常少量的数据更好地概括。基于此,我们基于残余暹罗网络提出了跳过剩余的成对网络(SRPN)。我们通过评估Omniglot和Mini Imageenet数据集的少量学习拟议模型来验证我们的假设。我们的模型优于相同深度和参数的残余暹罗设计。我们还表明,我们的模型与最先进的元学习的方法具有竞争力的基于元素的方法,即在挑战的迷你想象数据集上进行挑战的迷你想象,同时有更简单的设计,在五路上获得54.4 %的准确性只有每类的单个示例和超过70 %的精度,每个类别为每类。我们进一步观察到我们模型中的网络权重相比,与相似的规则化相比,我们的模型相比要小得多,从而验证了我们的模型设计允许更好的概括。我们还观察到我们的不对称,非公制SRPN设计自动学习以近似自然度量学习前沿,例如对称性和三角形不等式。

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