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Drug-drug interaction relation extraction with deep convolutional neural networks

机译:深度卷积神经网络的药物相互作用关系提取

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Drug-Drug Interaction (DDI) relation extraction is a multi-class classification problem that aims to predict the interaction between drugs in a sentence. The configuration of Convolutional Neural Network (CNN) in relation extraction usually applied shallow architecture layers, which may make the information in given input text is not fully captured, thus fail to capture a long sentence containing the detected drug relation or some irrelevant word captured during the feature extraction process. This paper proposed an extending depth of the CNN layer called DeepCNN for DDI relation extraction. The DeepCNN learns the high quality of the learning representation so that it is able to cover long input sentences as the typical of DDIExtraction dataset. We use multi-channel word-embedding to enlarge the vocabulary and decrease the number of unknown words, and Adam update rule to automatically learn the network parameters of DeepCNN for DDI relation extraction. The experiments show that the architecture of 10 layers DeepCNN successfully obtained the significant improvement compared to the previous CNN method in DDI relation extraction. The result proves that CNN is a robust and well-deserved for DDI relation extraction.
机译:药物-药物相互作用(DDI)关系提取是一个多类分类问题,旨在预测句子中药物之间的相互作用。卷积神经网络(CNN)在关系提取中的配置通常应用在浅层体系结构层上,这可能会使给定输入文本中的信息无法被完全捕获,从而无法捕获包含检测到的药物关系或在此过程中捕获的一些不相关单词的长句子特征提取过程。本文提出了一种称为DeepCNN的CNN层的扩展深度,用于DDI关系提取。 DeepCNN学习高质量的学习表示形式,因此能够覆盖DDIExtraction数据集典型的长输入句子。我们使用多通道词嵌入技术来扩大词汇量并减少未知词的数量,并使用Adam更新规则来自动学习DeepCNN的网络参数以进行DDI关系提取。实验表明,在DDI关系提取中,与以前的CNN方法相比,10层DeepCNN的体系结构成功获得了显着改进。结果证明,CNN对于DDI关系提取是可靠且应有的。

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