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基于多通道双向长短期记忆网络的情感分析 被引量:16

Sentiment Analysis Based on Multi-Channel Bidirectional Long Short Term Memory Network
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摘要 当前存在着大量的语言知识和情感资源,但在基于深度学习的情感分析研究中,这些特有的情感信息,没有在情感分析任务中得到充分利用。针对以上问题,该文提出了一种基于多通道双向长短期记忆网络的情感分析模型(multi-channels bidirectional long short term memory network,Multi-Bi-LSTM),该模型对情感分析任务中现有的语言知识和情感资源进行建模,生成不同的特征通道,让模型充分学习句子中的情感信息。与CNN相比,该模型使用的Bi-LSTM考虑了词序列之间依赖关系,能够捕捉句子的上下文语义信息,使模型获得更多的情感信息。最后在中文COAE2014数据集、英文MR数据集和SST数据集进行实验,取得了比普通Bi-LSTM、结合情感序列特征的卷积神经网络以及传统分类器更好的性能。 Language knowledge and sentiment resources are not well utilized in the current deep learning sentiment analysis.To address this issue,we propose a novel sentiment analysis model based on multi-channel bidirectional long short term memory network(Multi-Bi-LSTM),which generates different feature channels to fully learn the sentiment information of the text.Compared with CNN,the Bi-LSTM used in this model takes into account the dependencies between word sequences,and it can capture contextual semantic information about a sentence.The experiments on Chinese COAE2014 dataset,English MR dataset and SST dataset reveal better performance of the proposed method than the classical Bi-LSTM,the CNN combined with the features of sentiment sequences,and the classical classifiers.
作者 李卫疆 漆芳 LI Weijiang;QI Fang(Faculty of Information Engineering and Automation,Kunming University of Science and Technology,Kunming,Yunnan 650500,China)
出处 《中文信息学报》 CSCD 北大核心 2019年第12期119-128,共10页 Journal of Chinese Information Processing
基金 国家自然科学基金(61363045)
关键词 情感分析 长短期记忆 多通道 层归一化 sentiment analysis long short term memory multi-channels layer normalization
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