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Exploration of Noise Strategics in Semi-supervised Named Entity Classification

机译:半监督命名实体分类中的噪声策略探索

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Noise is inherent in real world datasets and modeling noise is critical during training as it is effective in regularization. Recently, novel semi-supervised deep learning techniques have demonstrated tremendous potential when learning with very limited labeled training data in image processing tasks. A critical aspect of these semi-supervised learning techniques is augmenting the input or the network with noise to be able to learn robust models. While modeling noise is relatively straightforward in continuous domains such as image classification, it is not immediately apparent how noise can be modeled in discrete domains such as language. Our work aims to address this gap by exploring different noise strategies for the semi-supervised named entity classification task, including statistical methods such as adding Gaussian noise to input embeddings. and linguistically-inspired ones such as dropping words and replacing words with their synonyms. We compare their performance on two benchmark datasets (OntoNotes and CoNLL) for named entity classification. Our results indicate that noise strategies that are linguistically informed perform at least as well as statistical approaches, while being simpler and requiring minimal tuning.
机译:噪声是现实世界数据集中固有的,在训练过程中建模噪声至关重要,因为它可以有效地进行正则化。最近,当在图像处理任务中使用非常有限的标记训练数据进行学习时,新颖的半监督深度学习技术已显示出巨大的潜力。这些半监督学习技术的一个关键方面是使用噪声来增加输入或网络,以便能够学习健壮的模型。虽然在连续领域(例如图像分类)中对噪声进行建模相对简单,但是如何在离散域(例如语言)中对噪声进行建模尚不立即清楚。我们的工作旨在通过针对半监督命名实体分类任务探索不同的噪声策略来解决这一差距,其中包括统计方法,例如将高斯噪声添加到输入嵌入中。以及受语言启发的语言,例如删除单词并用同义词替换单词。我们在命名实体分类的两个基准数据集(OntoNotes和CoNLL)上比较了它们的性能。我们的结果表明,以语言为依据的噪声策略至少与统计方法一样有效,同时更简单且需要的调整最少。

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