基于ERNIE-BiLSTM的中文文本情感分类方法

Haiyuan Guo, Chengying Chi, Xuegang Zhan
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引用次数: 4

摘要

对于中文文本情感分类任务,基于深度学习模型的预处理不能很好地保留句子中单词的信息和多义词。因此本文采用了百度新开发的ERNIE [1-2] (Knowledge Enhanced Semantic Representation,知识增强语义表示)预训练模型,该模型基于单词特征输入建模,既增强了单词的语义表示,又保留了单词的上下文信息和单词的多义性。经ERNIE模型预训练后,将输出的词向量作为BiLSTM(双向长短期记忆网络)模型的输入,进行训练并获得情感分类结果。在nlpcc2014微博情感分析样本数据集上验证,Ernie bilstm模型的准确率为92.35%,证明该模型在中文文本情感分类任务中具有良好的性能。
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ERNIE-BiLSTM Based Chinese Text Sentiment Classification Method
For the Chinese text sentiment classification task, the preprocessing based on deep learning models cannot retain the information and polysemy of the word in the sentence well. So this paper adopts the newly developed ERNIE [1–2] (Knowledge Enhanced Semantic Representation) pre-training model from Baidu, which is based on word feature input modeling, not only enhances the semantic representation of the word, but also preserves the contextual information of the word and the polysemy of the word. After pre-training by ERNIE model, the output word vector is used as the input of BiLSTM (bidirectional long and short-term memory network) model for training and obtaining sentiment classification results. The accuracy rate of Ernie bilstm model is 92.35% after verification on nlpcc2014 microblog sentiment analysis sample data set, which proves that the model has good performance in Chinese text sentiment classification task.
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