基于自注意机制和密集连接的BiLSTM-CNN文本情感分析

Jianjun Sun
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引用次数: 1

摘要

为了提高情感分析的准确性,本文提出了一种基于自注意机制和密集连接的BiLSTM-cnn文本情感分析新方法。方法建立bilstm - cnn - attt模型。首先,引入BiLSTM提取语境词;然后,利用卷积神经网络(CNN)提取局部语义特征;结合DenseNet密集连接模块,提高了整个模型的记忆强度,提高了权重信息的利用率。最后,利用自注意机制提高模型挖掘信息的能力。本文选取chdenticorp和CCF2012的数据集,训练DenseNet特征映射矩阵的最优值。将最优值引入模型对比实验。在实验中,该方法的准确率、召回率和F值均大于91%,是所有模型中最高的。该方法有效地提高了文本情感分析的准确性,具有很高的研究和实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BiLSTM-CNN Text Emotion Analysis Based on Self Attention Mechanism and Dense Connection
In order to improve the accuracy of sentiment analysis, this paper presents a new method for sentiment analysis of BiLSTM-cnn text based on self attention mechanism and dense connection. Methods BiLSTM-CNN-Attmodel was established. Firstly, BiLSTM was introduced to extract context words. Then, the convolutional neural network(CNN) is used to extract local semantic features. Combined with DenseNet dense connection module, the memory strength of the whole model is improved, and the utilization rate of weight information is enhanced. Finally, Self-attention mechanism is used to improve the ability of model mining information. This paper selects the data sets of chndenticorp and CCF2012 to train the optimal value of the DenseNet feature mapping matrix. The optimal value is brought into the model contrast experiment. In the experiment, the accuracy rate, recall rate and F value of this method are all greater than 91%, which is the highest among the models. It effectively improves the accuracy of text sentiment analysis, and has high research and practical value.
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