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Sentiment Analysis of Chinese Microblog Based on Stacked Bidirectional LSTM

机译:基于堆叠双向LSTM的中国微博的情感分析

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In this paper, we propose a sentiment analysis method by incorporating Continuous Bag-of-Words (CBOW) model and Stacked Bidirectional long short-term memory (Stacked Bi-LSTM) model to enhance the performance of sentiment prediction. Firstly, a word embedding model, CBOW model, is employed to capture semantic features of words and transfer words into high dimensional word vectors. Secondly, we introduce Stacked Bi-LSTM model to conduct the feature extraction of sequential word vectors at a deep level. Finally, a binary softmax classifier utilizes semantic and contextual features to predict the sentiment orientation. Extensive experiments on real dataset collected from Weibo (i.e., one of the most popular Chinese microblogs) show that our proposed approach achieves better performance than other machine learning models.
机译:在本文中,我们通过结合连续的单词(CBY)模型和堆叠双向长期内记忆(堆叠的Bi-LSTM)模型来提出情绪分析方法,以增强情绪预测的性能。首先,使用单词嵌入模型Cabow模型,用于捕获单词的语义特征并将单词传输到高维语向量中。其次,我们介绍堆叠的Bi-LSTM模型,以在深度水平下进行连续字矢量的特征提取。最后,二进制软MAX分类器利用语义和上下文特征来预测情绪取向。从微博收集的真实数据集的大量实验(即,最受欢迎的中国微博之一)表明我们的建议方法比其他机器学习模型实现了更好的性能。

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