Title
Influence Of Noise On Transfer Learning In Chinese Sentiment Classification Using Gru
Abstract
Sentiment classification for product reviews is of great significance for business feedback for manufactures, sellers and users. However, since a large amount of training data for a specific product domain is not always available, transfer learning is often utilized to do sentiment analysis applications. Specifically, after a pre-training of the large Chinese corpus by a word-embedding method, a larger size of training data for a specific domain was trained using a Gated Recurrent Unit. And then the trained model was used for testing the sentiment classification for a smaller amount of product reviews. The performances of this transfer learning method was also examined, especially to testify different factors affecting the performance of the transfer learning. The experimental results showed that different wording in the review domain (which we call it "noise") will have a greater impact on transfer learning. We also calculate the difference of the wording to verify our hypothesis. According to these results, we have explored the impacts of the dataset wording, while we are doing Chinese text sentiment classification. We also shed a light in optimizing the transfer learning effect in general.
Year
Venue
Keywords
2017
2017 13TH INTERNATIONAL CONFERENCE ON NATURAL COMPUTATION, FUZZY SYSTEMS AND KNOWLEDGE DISCOVERY (ICNC-FSKD)
sentiment classification, neural network, Gated Recurrent Unit, transfer learning
Field
DocType
Citations 
Training set,Computer science,Sentiment analysis,Transfer of learning,Recurrent neural network,Artificial intelligence,Product reviews,Machine learning
Conference
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Mingjun Dai100.34
Shansong Huang200.34
Junpei Zhong3266.99
Chenguang Yang42213138.71
Shiwei Yang500.34