Authors
Richard Socher, Jeffrey Pennington, Eric H Huang, Andrew Y Ng, Christopher D Manning
Publication date
2011/7
Conference
Proceedings of the 2011 conference on empirical methods in natural language processing
Pages
151-161
Description
We introduce a novel machine learning framework based on recursive autoencoders for sentence-level prediction of sentiment label distributions. Our method learns vector space representations for multi-word phrases. In sentiment prediction tasks these representations outperform other state-of-the-art approaches on commonly used datasets, such as movie reviews, without using any pre-defined sentiment lexica or polarity shifting rules. We also evaluate the model’s ability to predict sentiment distributions on a new dataset based on confessions from the experience project. The dataset consists of personal user stories annotated with multiple labels which, when aggregated, form a multinomial distribution that captures emotional reactions. Our algorithm can more accurately predict distributions over such labels compared to several competitive baselines.
Total citations
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Scholar articles
R Socher, J Pennington, EH Huang, AY Ng… - Proceedings of the 2011 conference on empirical …, 2011
R Socher, J Pennington, EH Huang, AY Ng… - Google Scholar Google Scholar Digital Library Digital …, 2011