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Marginalizing stacked linear denoising autoencoders
2015
Journal of machine learning research
Stacked denoising autoencoders (SDAs) have been successfully used to learn new representations for domain adaptation. They have attained record accuracy on standard benchmark tasks of sentiment analysis across different text domains. SDAs learn robust data representations by reconstruction, recovering original features from data that are artificially corrupted with noise. In this paper, we propose marginalized Stacked Linear Denoising Autoencoder (mSLDA) that addresses two crucial limitations
dblp:journals/jmlr/ChenWXS15
fatcat:5jawfi3gnrdstid4gwn5fm4l7y