Telecommunications Science ›› 2016, Vol. 32 ›› Issue (7): 106-114.doi: 10.11959/j.issn.1000-0801.2016182

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Hierarchical micro-blog sentiment classification based on feature fusion

Xianying ZHU,Zhen LIU,Wei JIN,Tingting LIU,Cuijuan LIU,Yanjie CHAI   

  1. Faculty of Information Science and Technology,Ningbo University,Ningbo 315211,China
  • Online:2016-07-20 Published:2017-04-26
  • Supported by:
    The National Natural Science Foundation of China;The National Natural Science Foundation of China;Ningbo Science and Technology Plan Project;Ningbo Science and Technology Plan Project;Ningbo Science and Technology Plan Project;Ningbo Science and Technology Plan Project;Specialized Research Fund for the Doctoral Program of Higher Education

Abstract:

Sentiment classification is an important issue of opinion mining.It has a high application value to classify sentiment in micro-blogs.As traditional feature selection method has semantic gap,a neural network language model was used to propose a deep feature representation method based on probability model to distribute weight to the word vector.Using this method,text semantic vector could be built.In order to avoid the semantic gap,the deep features and shallow features of text were integrated and feature vector that contained semantic information was constructed.With SVM hierarchical classification model,a variety of sentiments could be classified.Experimental results show that the hierarchical sentiment classification method based on feature fusion can improve the accuracy of sentiment classification in micro-blogs.

Key words: sentiment classification, word vector, deep feature, eature fusion, hierarchical classification model

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