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EvidentialMix: Learning with Combined Open-set and Closed-set Noisy Labels

机译:AdidentialMix:使用组合开放式和封闭式嘈杂标签学习

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The efficacy of deep learning depends on large-scale data sets that have been carefully curated with reliable data acquisition and annotation processes. However, acquiring such large-scale data sets with precise annotations is very expensive and time-consuming, and the cheap alternatives often yield data sets that have noisy labels. The field has addressed this problem by focusing on training models under two types of label noise: 1) closed-set noise, where some training samples are incorrectly annotated to a training label other than their known true class; and 2) open-set noise, where the training set includes samples that possess a true class that is (strictly) not contained in the set of known training labels. In this work, we study a new variant of the noisy label problem that combines the open-set and closed-set noisy labels, and introduce a benchmark evaluation to assess the performance of training algorithms under this setup. We argue that such problem is more general and better reflects the noisy label scenarios in practice. Furthermore, we propose a novel algorithm, called EvidentialMix, that addresses this problem and compare its performance with the state-of-the-art methods for both closed-set and open-set noise on the proposed benchmark. Our results show that our method produces superior classification results and better feature representations than previous state-of-the-art methods. The code is available at https:/github.com/ragavsachdeva/EvidentialMix.
机译:深度学习的功效取决于已经用可靠的数据采集和注释过程仔细策划的大规模数据集。但是,以精确的注释获取此类大规模数据集非常昂贵且耗时,并且便宜的替代方案通常会产生具有噪声标签的数据集。该领域通过专注于两种标签噪声的培训模型来解决了这个问题:1)封闭式噪声,其中一些培训样本被错误地注释给除了其已知的真实类别以外的培训标签; 2)开放式噪声,其中培训集包括具有真正类别的样本(严格地)未包含在已知训练标签集中的真实类别。在这项工作中,我们研究了一个新的变体,它的嘈杂标签问题结合了开放式和封闭式嘈杂的标签,并介绍了基准评估,以评估此设置下的培训算法的性能。我们认为此类问题更为一般,更好地反映了实践中的嘈杂标签方案。此外,我们提出了一种新颖的算法,称为eadidentialmix,该算法解决了这个问题,并将其与最先进的方法进行了最先进的方法,以在所提出的基准上的闭合和开放式噪声。我们的研究结果表明,我们的方法生产出优异的分类结果和比以前最先进的方法更好的特征表示。代码可在https:/github.com/ragavsachdeva/evidentialmix上获得。

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