Title
Variational Autoencoder for Semi-Supervised Text Classification.
Abstract
Although semi-supervised variational autoencoder (SemiVAE) works in image classification task, it fails in text classification task if using vanilla LSTM as its decoder. From a perspective of reinforcement learning, it is verified that the decoder's capability to distinguish between different categorical labels is essential. Therefore, Semi-supervised Sequential Variational Autoencoder (SSVAE) is proposed, which increases the capability by feeding label into its decoder RNN at each time-step. Two specific decoder structures are investigated and both of them are verified to be effective. Besides, in order to reduce the computational complexity in training, a novel optimization method is proposed, which estimates the gradient of the unlabeled objective function by sampling, along with two variance reduction techniques. Experimental results on Large Movie Review Dataset (IMDB) and AG's News corpus show that the proposed approach significantly improves the classification accuracy compared with pure-supervised classifiers, and achieves competitive performance against previous advanced methods. State-of-the-art results can be obtained by integrating other pretraining-based methods.
Year
Venue
Field
2017
THIRTY-FIRST AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE
Autoencoder,Pattern recognition,Computer science,Categorical variable,Sampling (statistics),Artificial intelligence,Contextual image classification,Variance reduction,Machine learning,Computational complexity theory,Reinforcement learning
DocType
Citations 
PageRank 
Conference
3
0.38
References 
Authors
0
4
Name
Order
Citations
PageRank
Weidi Xu172.14
Haoze Sun282.15
Chao Deng328235.14
Ying Tan4128695.40