Distance-based classification is frequently used in transductive few-shot learning (FSL). However, due to the high-dimensionality of image representations, FSL classifiers are prone to suffer from the hubness problem, where a few points (hubs) occur frequently in multiple nearest neighbour lists of other points. Hubness negatively impacts distance-based classification when hubs from one class appear often among the nearest neighbors of points from another class, degrading the classifier's performance. To address the hubness problem in FSL, we first prove that hubness can be eliminated by distributing representations uniformly on the hypersphere. We then propose two new approaches to embed representations on the hypersphere, which we prove optimize a tradeoff between uniformity and local similarity preservation -- reducing hubness while retaining class structure. Our experiments show that the proposed methods reduce hubness, and significantly improves transductive FSL accuracy for a wide range of classifiers.
翻译:远程分类经常用于感测短片学习(FSL),然而,由于图像显示的高度多维性,FSL分类者容易受到中枢问题的影响,其中几个点(枢纽)经常出现在多个近邻的其他点清单中。当一个类别的中心经常出现在另一类的近邻点中时,对远程分类产生消极影响,降低分类者的工作表现。为了解决FSL的中枢问题,我们首先证明,通过在超视距上统一分配代表可以消除中枢。然后,我们提出了两种新办法,在超视距上嵌入代表,我们证明这是在统一性和本地相似性保护之间的最佳平衡 -- -- 减少中枢性,同时保留类结构。我们的实验表明,拟议的方法降低了中枢性,并大大提高了广泛分类者的中枢性。</s>