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Recurrent Convolution Neural Networks for classification of protein-protein interaction articles from biomedical literature

机译:恢复卷积神经网络,用于生物医学文献的蛋白质 - 蛋白质相互作用制品分类

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Text classification (TC) is a task that assigns a text to one or more classes and predefined categories. Constructing text classifiers with high accuracy is a vital task in biomedical field, given the wealth of information hidden in unlabelled documents. Because of large feature spaces, traditionally discriminative approaches, such as logistic regression and support vector machines with n-gram and semantic features have been utilized for biomedical text classification. In this study, we propose Recurrent Convolution Neural Networks (RCNN) based automated technique for classifying protein-protein interaction (PPI) articles. In RCNN model we utilized a recurrent structure to detain the contextual information from word embedding features. Max pooling layer was configured to extract important semantic keywords from the text. We evaluated our approach on two benchmark PPI datasets BioCreative II and BioCreative III. An experimental results show that RCNN based protein-protein interaction classification approach performs better than other state of the art approaches.
机译:文本分类(TC)是一个任务,将文本分配给一个或多个类和预定义类别。考虑到隐藏在未标记文件中的信息,构建高精度的文本分类器是生物医学领域的一个重要任务。由于大型特征空间,传统上的歧视方法,例如具有N-Gram和语义特征的逻辑回归和支持向量机器已经用于生物医学文本分类。在本研究中,我们提出了用于分类蛋白质 - 蛋白质相互作用(PPI)制品的复发性卷积神经网络(RCNN)的自动化技术。在RCNN模型中,我们利用了反复化结构来介断来自嵌入功能的语法信息。最大池层配置为从文本中提取重要的语义关键字。我们评估了我们在两个基准PPI数据集生物重建II和生物重建III上的方法。实验结果表明,基于RCNN的蛋白质 - 蛋白质相互作用分类方法比其他现有技术更好地表现出更好的方法。

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