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Data Analysis and Knowledge Discovery  2019, Vol. 3 Issue (4): 71-79    DOI: 10.11925/infotech.2096-3467.2018.0516
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Text Sentiment Classification Based on Deep Belief Network
Qingqing Zhang1(),Xingshi He2,Huimin Wang2,Shengjun Meng3
1School of Management, Xi’an Polytechnic University, Xi’an 710048, China
2School of Science, Xi’an Polytechnic University, Xi’an 710048, China
3School of Journalism and New Media, Xi’an Jiaotong University, Xi’an 710049, China
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[Objective] This paper focused on Chinese text sentiment classification based on deep belief network, especially the parameter selection and performance analysis of the network. [Methods] Chinese e-commercial reviews are as the object of the study, the unigram, bigram, POS, simple dependency label, sentiment score and triple dependency features are extracted and used as the input of deep belief network by setting different layers and different input numbers to compute the accuracy of sentiment classification. [Results] The results demonstrate that the triple dependency features as the input got better classification performance than the other features, but the number of hidden layers doesn’t have an effect on the classification accuracy. [Limitations] The methods aren’t conducted and verified on other deep learning models. [Conclusions] Deep learning has a good performance for sentiment analysis, but how to set up parameters still need to be further considered.

Key wordsDeep Belief Network      Text Sentiment Classification      Parameter Selection     
Received: 08 May 2018      Published: 29 May 2019

Cite this article:

Qingqing Zhang,Xingshi He,Huimin Wang,Shengjun Meng. Text Sentiment Classification Based on Deep Belief Network. Data Analysis and Knowledge Discovery, 2019, 3(4): 71-79.

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