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Negative Margin Matters: Understanding Margin in Few-Shot Classification

机译:负保证金事项:在几次拍摄分类中了解余量

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This paper introduces a negative margin loss to metric learning based few-shot learning methods. The negative margin loss significantly outperforms regular softmax loss, and achieves state-of-the-art accuracy on three standard few-shot classification benchmarks with few bells and whistles. These results are contrary to the common practice in the metric learning field, that the margin is zero or positive. To understand why the negative margin loss performs well for the few-shot classification, we analyze the discriminability of learned features w.r.t different margins for training and novel classes, both empirically and theoretically. We find that although negative margin reduces the feature discriminabil-ity for training classes, it may also avoid falsely mapping samples of the same novel class to multiple peaks or clusters, and thus benefit the discrimination of novel classes.
机译:本文介绍了基于少量学习方法的公制学习的负幅损失。负缘损失明显优于常规的软墨粉损失,并在三个标准的少量分类基准中实现最先进的准确性,其中响铃和口哨。这些结果与度量学习领域的常见做法相反,边距为零或正。要了解为什么负幅损失对几次拍摄分类表现良好,我们分析了学习功能W.R.T为培训和小型课程的不同利润率,无论是在经验和理论上。我们发现,虽然负余量减少了训练类的特征鉴别iscInabil-ity,但它也可以避免错误地将相同的新颖类别的样本映射到多个峰或群集,从而有利于新颖类别的辨别。

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