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Does Label Smoothing Mitigate Label Noise?

机译:标签平滑缓解标签噪音吗?

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Label smoothing is commonly used in training deep learning models, wherein one-hot training labels are mixed with uniform label vectors. Empirically, smoothing has been shown to improve both predictive performance and model calibration. In this paper, we study whether label smoothing is also effective as a means of coping with label noise. While label smoothing apparently amplifies this problem - being equivalent to injecting symmetric noise to the labels - we show how it relates to a general family of loss-correction techniques from the label noise literature. Building on this connection, we show that label smoothing is competitive with loss-correction under label noise. Further, we show that when distilling models from noisy data, label smoothing of the teacher is beneficial; this is in contrast to recent findings for noise-free problems, and sheds further light on settings where label smoothing is beneficial.
机译:标签平滑通常用于训练深层学习模型,其中一个热训练标签与均匀的标签载体混合。 经验上,已显示平滑,以改善预测性能和模型校准。 在本文中,我们研究标签平滑是否也是有效的,作为应对标签噪声的手段。 虽然标签平滑显然放大了这个问题 - 相当于向标签注入对称噪声 - 我们展示了如何与标签噪声文献中的丢失校正技术一般族族。 在这方面构建,我们表明标签平滑与标签噪声下的损失校正具有竞争力。 此外,我们表明,当从嘈杂数据中蒸馏模型时,教师的标签平滑是有益的; 这与最近的无噪声问题的发现相反,并且在标签平滑有益的环境中进一步发光。

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