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Text Classification Based on TextCNN for Power Grid User Fault Repairing Information

机译:基于TextCNN的电网用户故障修复信息文本分类

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Aiming at the problem that the fault information submitted by power grid users is difficult to be automatically analyzed and dealt with, We proposed a text classification model based on TextCNN (Text Convolutional Neural Network, TCNN) for fault repairing information of Power grid users. First of all, Using CBOW (Continuous Bag-of-Words) to learn the distributed representation of text. Second, The feature of pretrained word vector is learned through the text convolutional neural network model, and k-max pooling is used to further extract the high-level features. Finally, the classification model is obtained by softmax classifier. We use the model to classify and analysis the fault repairing information. Experimental results validate the effectiveness of our approach when compared to the state-of-the-art methods.
机译:针对电网用户提交的故障信息难以自动分析处理的问题,提出了一种基于TextCNN(文本卷积神经网络,TCNN)的电网故障修复信息分类模型。首先,使用CBOW(连续词袋)学习文本的分布式表示形式。其次,通过文本卷积神经网络模型学习预训练词向量的特征,并使用k-max池进一步提取高级特征。最后,通过softmax分类器获得分类模型。我们使用该模型对故障修复信息进行分类和分析。与最先进的方法相比,实验结果证明了我们方法的有效性。

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