Publication | Closed Access
A Convolutional Neural Network for Aspect-Level Sentiment Classification
26
Citations
15
References
2019
Year
Natural Language ProcessingAspect-level SentimentConvolutional Neural NetworkEngineeringComputational LinguisticsLinguisticsNlp TaskAffective ComputingAspect-level Sentiment PolarityLanguage StudiesMultimodal Sentiment AnalysisDeep LearningSemantic ParsingRecurrent Neural NetworkSentiment AnalysisText MiningWord Embeddings
Sentiment analysis, including aspect-level sentiment classification, is an important basic natural language processing (NLP) task. Aspect-level sentiment can provide complete and in-depth results. Words with different contexts variably influence the aspect-level sentiment polarity of sentences, and polarity varies based on different aspects of a sentence. Recurrent neural networks (RNNs) are regarded as effective models for handling NLP and have performed well in aspect-level sentiment classification. Extensive literature exists on sentiment classification that utilizes convolutional neural networks (CNNs); however, no literature on aspect-level sentiment classification that uses CNNs is available. In the present study, we develop a CNN model for handling aspect-level sentiment classification. In our model, attention-based input layers are incorporated into CNN to introduce aspect information. In our experiment, in which a benchmark dataset from Twitter is compared with other models, incorporating aspect information into CNN improves aspect-level sentiment classification performance without using syntactic parser or other language features.
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