Emotion-Semantic-Enhanced Bidirectional LSTM with Multi-Head Attention Mechanism for Microblog Sentiment Analysis

The sentiment analysis of microblog text has always been a challenging research field due to the limited and complex contextual information. However, most of the existing sentiment analysis methods for microblogs focus on classifying the polarity of emotional keywords while ignoring the transition or progressive impact of words in different positions in the Chinese syntactic structure on global sentiment, as well as the utilization of emojis. To this end, we propose the emotion-semantic-enhanced bidirectional long short-term memory (BiLSTM) network with the multi-head attention mechanism model (EBILSTM-MH) for sentiment analysis. This model uses BiLSTM to learn feature representation of input texts, given the word embedding. Subsequently, the attention mechanism is used to assign the attentive weights of each words to the sentiment analysis based on the impact of emojis. The attentive weights can be combined with the output of the hidden layer to obtain the feature representation of posts. Finally, the sentiment polarity of microblog can be obtained through the dense connection layer. The experimental results show the feasibility of our proposed model on microblog sentiment analysis when compared with other baseline models.

[1]  Hao Wang,et al.  Sentiment Analysis of Chinese Microblog Based on Stacked Bidirectional LSTM , 2019, IEEE Access.

[2]  Shaolong Sun,et al.  Sparse Self-Attention LSTM for Sentiment Lexicon Construction , 2019, IEEE/ACM Transactions on Audio, Speech, and Language Processing.

[3]  Wen-Tsao Pan,et al.  Sentiment classification of micro‐blog comments based on Randomforest algorithm , 2019, Concurr. Comput. Pract. Exp..

[4]  Jun Zhao,et al.  Co-Extracting Opinion Targets and Opinion Words from Online Reviews Based on the Word Alignment Model , 2015, IEEE Transactions on Knowledge and Data Engineering.

[5]  Wanxiang Che,et al.  Sentence Compression for Aspect-Based Sentiment Analysis , 2015, IEEE/ACM Transactions on Audio, Speech, and Language Processing.

[6]  Rui Xia,et al.  Ensemble of feature sets and classification algorithms for sentiment classification , 2011, Inf. Sci..

[7]  Chao Yang,et al.  Aspect-based sentiment analysis with alternating coattention networks , 2019, Inf. Process. Manag..

[8]  Guangmin Hu,et al.  A Novel Method for Twitter Sentiment Analysis Based on Attentional-Graph Neural Network , 2020, Inf..

[9]  Yang Li,et al.  Learning multi-grained aspect target sequence for Chinese sentiment analysis , 2018, Knowl. Based Syst..

[10]  Houkuan Huang,et al.  Feature selection for text classification with Naïve Bayes , 2009, Expert Syst. Appl..

[11]  Xiaojun Wan,et al.  CMiner: Opinion Extraction and Summarization for Chinese Microblogs , 2016, IEEE Transactions on Knowledge and Data Engineering.

[12]  K. Robert Lai,et al.  Community-Based Weighted Graph Model for Valence-Arousal Prediction of Affective Words , 2016, IEEE/ACM Transactions on Audio, Speech, and Language Processing.

[13]  Zhendong Niu,et al.  Automatic construction of domain-specific sentiment lexicon based on constrained label propagation , 2014, Knowl. Based Syst..

[14]  Shunxiang Zhang,et al.  Sentiment analysis of Chinese micro-blog text based on extended sentiment dictionary , 2018, Future Gener. Comput. Syst..

[15]  Guang Yang,et al.  Emotion-Semantic-Enhanced Neural Network , 2019, IEEE/ACM Transactions on Audio, Speech, and Language Processing.

[16]  Tao Chen,et al.  Expert Systems With Applications , 2022 .