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Linguistically Regularized LSTMs for Sentiment Classification

About

Sentiment understanding has been a long-term goal of AI in the past decades. This paper deals with sentence-level sentiment classification. Though a variety of neural network models have been proposed very recently, however, previous models either depend on expensive phrase-level annotation, whose performance drops substantially when trained with only sentence-level annotation; or do not fully employ linguistic resources (e.g., sentiment lexicons, negation words, intensity words), thus not being able to produce linguistically coherent representations. In this paper, we propose simple models trained with sentence-level annotation, but also attempt to generating linguistically coherent representations by employing regularizers that model the linguistic role of sentiment lexicons, negation words, and intensity words. Results show that our models are effective to capture the sentiment shifting effect of sentiment, negation, and intensity words, while still obtain competitive results without sacrificing the models' simplicity.

Qiao Qian, Minlie Huang, Jinhao Lei, Xiaoyan Zhu• 2016

Related benchmarks

TaskDatasetResultRank
Subjectivity ClassificationSubj
Accuracy89.9
266
Sentiment ClassificationMR (test)
Accuracy82.1
142
Sentiment ClassificationCR
Accuracy82.5
142
Text ClassificationSST-2
Accuracy87.5
121
Text ClassificationMR
Accuracy81.5
93
Sentence ClassificationStanford Sentiment Treebank (SST) fine-grained (test)
Accuracy50.6
40
Sentiment ClassificationSST (test)
Accuracy51
37
Text Classificationmovie review dataset (test)
Accuracy81.5
12
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