%0 Conference Proceedings %T Text Sentiment Analysis based on Fusion of Structural Information and Serialization Information %A Gan, Ling %A Gong, Houyu %Y Kondrak, Greg %Y Watanabe, Taro %S Proceedings of the Eighth International Joint Conference on Natural Language Processing (Volume 1: Long Papers) %D 2017 %8 November %I Asian Federation of Natural Language Processing %C Taipei, Taiwan %F gan-gong-2017-text %X Tree-structured Long Short-Term Memory (Tree-LSTM) has been proved to be an effective method in the sentiment analysis task. It extracts structural information on text, and uses Long Short-Term Memory (LSTM) cell to prevent gradient vanish. However, though combining the LSTM cell, it is still a kind of model that extracts the structural information and almost not extracts serialization information. In this paper, we propose three new models in order to combine those two kinds of information: the structural information generated by the Constituency Tree-LSTM and the serialization information generated by Long-Short Term Memory neural network. Our experiments show that combining those two kinds of information can give contributes to the performance of the sentiment analysis task compared with the single Constituency Tree-LSTM model and the LSTM model. %U https://aclanthology.org/I17-1034 %P 336-341