软损失函数的一种情况

Alexandra Uma, Tommaso Fornaciari, Dirk Hovy, Silviu Paun, Barbara Plank, Massimo Poesio
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引用次数: 28

摘要

最近,Peterson等人提供了使用由人群注释生成的概率软标签来训练计算机视觉模型的好处的证据,表明使用这种标签可以最大限度地提高模型在未见数据上的性能。在本文中,我们对这些结果进行了概括,表明除了Peterson等人研究的方法之外,软标签训练是在其他几个人工智能任务中使用群体注释的有效方法,并且当它们的性能与最先进的从众包数据中学习的方法进行比较时也是如此。
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A Case for Soft Loss Functions
Recently, Peterson et al. provided evidence of the benefits of using probabilistic soft labels generated from crowd annotations for training a computer vision model, showing that using such labels maximizes performance of the models over unseen data. In this paper, we generalize these results by showing that training with soft labels is an effective method for using crowd annotations in several other ai tasks besides the one studied by Peterson et al., and also when their performance is compared with that of state-of-the-art methods for learning from crowdsourced data.
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