@inproceedings{51e90981cedf44fc84a6b7727b3148bb,
title = "Auto-encoder based bagging architecture for sentiment analysis",
abstract = "Sentiment analysis has long been a hot topic for under- standing users statements online. Previously many machine learning approaches for sentiment analysis such as simple feature-oriented SVM or more complicated probabilistic models have been proposed. Though they have demon-strated capability in polarity detection, there exist one challenge called the curse of dimensionality due to the high dimensional nature of text-based documents. In this research, inspired by the dimensionality reduction and feature extraction capability of auto-encoders, an auto- encoder-based bagging prediction architecture (AEBPA) is proposed. The experimental study on commonly used datasets has shown its potential. It is believed that this method can offer the researchers in the community further insight into bagging oriented solution for sentimental analysis.",
keywords = "Auto-encoder, Bagging, Deep learning, Sentiment analysis",
author = "Wenge Rong and Yifan Nie and Yuanxin Ouyang and Baolin Peng and Zhang Xiong",
note = "Publisher Copyright: {\textcopyright} 2014 by Knowledge Systems Institute Graduate School.; 20th International Conference on Distributed Multimedia Systems, DMS 2014 ; Conference date: 27-08-2014 Through 29-08-2014",
year = "2014",
language = "英语",
series = "Proceedings: DMS 2014 - 20th International Conference on Distributed Multimedia Systems",
publisher = "Knowledge Systems Institute Graduate School",
pages = "221--229",
booktitle = "Proceedings",
address = "美国",
}