Semi-Supervised Recursive Autoencoders for Predicting Sentiment Distributions

743 indexed citations

Abstract

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This paper, published in 2011, received 743 indexed citations. Written by Richard Socher, Jeffrey Pennington, Eric Huang, Andrew Y. Ng and Christopher D. Manning covering the research area of Artificial Intelligence. It is primarily cited by scholars working on Artificial Intelligence (657 citations), Information Systems (94 citations) and Computer Vision and Pattern Recognition (80 citations). Published in Empirical Methods in Natural Language Processing.

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Countries where authors are citing Semi-Supervised Recursive Autoencoders for Predicting Sentiment Distributions

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This map shows the geographic impact of Semi-Supervised Recursive Autoencoders for Predicting Sentiment Distributions. It shows the number of citations coming from papers published by authors working in each country. You can also color the map by specialization and compare the number of citations received by Semi-Supervised Recursive Autoencoders for Predicting Sentiment Distributions with the expected number of citations based on a country's size and research output (numbers larger than one mean the country cites Semi-Supervised Recursive Autoencoders for Predicting Sentiment Distributions more than expected).

Fields of papers citing Semi-Supervised Recursive Autoencoders for Predicting Sentiment Distributions

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Physical SciencesHealth SciencesLife SciencesSocial Sciences

This network shows the impact of Semi-Supervised Recursive Autoencoders for Predicting Sentiment Distributions. Nodes represent research fields, and links connect fields that are likely to share authors. Colored nodes show fields that tend to cite the Semi-Supervised Recursive Autoencoders for Predicting Sentiment Distributions.

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This paper is also available at doi.org/w9731915.

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