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Filter pruning of Convolutional Neural Networks for text classification: A case study of cancer pathology report comprehension

机译:文本分类卷积神经网络的过滤器修剪:癌症病理报告理解的案例研究

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Convolutional Neural Networks (CNN) have recently demonstrated effective performance in many Natural Language Processing tasks. In this study, we explore a novel approach for pruning a CNN's convolution filters using our new data-driven utility score. We have applied this technique to an information extraction task of classifying a dataset of cancer pathology reports by cancer type, a highly imbalanced dataset. Compared to standard CNN training, our new algorithm resulted in a nearly .07 increase in the micro-averaged F1-score and a strong .22 increase in the macro-averaged F1-score using a model with nearly a third fewer network weights. We show how directly utilizing a network's interpretation of data can result in strong performance gains, particularly with severely imbalanced datasets.
机译:卷积神经网络(CNN)最近在许多自然语言处理任务中表现出有效的性能。在这项研究中,我们探讨了使用我们新的数据驱动的实用程序分数修剪CNN卷积过滤器的新方法。我们已经将这种技术应用于通过癌症类型分类癌症病理报告数据集的信息提取任务,是一个高度不平衡的数据集。与标准的CNN培训相比,我们的新算法导致微平均F1分数增加了几乎0.07的增加,并且使用具有近第三个网络权重的模型的宏观平均F1分数的强劲.22增加。我们展示了如何直接利用网络对数据解释的解释,可能会导致强大的性能增益,特别是在严重不平衡的数据集中。

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