Recent studies on learning with noisy labels have shown remarkable performance by exploiting a small clean dataset. In particular, model agnostic meta-learning-based label correction methods further improve performance by correcting noisy labels on the fly. However, there is no safeguard on the label miscorrection, resulting in unavoidable performance degradation. Moreover, every training step requires at least three back-propagations, significantly slowing down the training speed. To mitigate these issues, we propose a robust and efficient method that learns a label transition matrix on the fly. Employing the transition matrix makes the classifier skeptical about all the corrected samples, which alleviates the miscorrection issue. We also introduce a two-head architecture to efficiently estimate the label transition matrix every iteration within a single back-propagation, so that the estimated matrix closely follows the shifting noise distribution induced by label correction. Extensive experiments demonstrate that our approach shows the best performance in training efficiency while having comparable or better accuracy than existing methods.
翻译:最近关于使用噪音标签进行学习的研究显示,通过利用一个小型的清洁数据集,使用一个小的清洁数据集,最近关于使用噪音标签的学习的研究表明了显著的成绩。特别是,模型的不可知性、基于学习的标签校正方法,通过纠正苍蝇上的噪音标签,进一步提高了性能。然而,对标签错误的纠正没有保障,导致不可避免的性能退化。此外,每个培训步骤都需要至少三个反向分析,从而大大降低培训速度。为了缓解这些问题,我们建议了一种强有力和有效的方法,在飞蝇上学习标签过渡矩阵。使用过渡矩阵使分类者对所有校正样品产生怀疑,从而减轻了错误纠正问题。我们还引入了双头结构,以高效估计标签转换矩阵在单一反向分析中的每一变异,从而使估计矩阵密切跟踪由标签校正引起的变化的噪音分布。广泛的实验表明,我们的方法在培训效率方面表现出最佳的绩效,同时具有可比或比现有方法更准确性。