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Interactive Attention Networks for Aspect-Level Sentiment Classification

About

Aspect-level sentiment classification aims at identifying the sentiment polarity of specific target in its context. Previous approaches have realized the importance of targets in sentiment classification and developed various methods with the goal of precisely modeling their contexts via generating target-specific representations. However, these studies always ignore the separate modeling of targets. In this paper, we argue that both targets and contexts deserve special treatment and need to be learned their own representations via interactive learning. Then, we propose the interactive attention networks (IAN) to interactively learn attentions in the contexts and targets, and generate the representations for targets and contexts separately. With this design, the IAN model can well represent a target and its collocative context, which is helpful to sentiment classification. Experimental results on SemEval 2014 Datasets demonstrate the effectiveness of our model.

Dehong Ma, Sujian Li, Xiaodong Zhang, Houfeng Wang• 2017

Related benchmarks

TaskDatasetResultRank
Aspect-Term Sentiment AnalysisLAPTOP SemEval 2014 (test)
Macro-F162.9
69
Aspect-level sentiment classificationSemEval Restaurant 2014 (test)
Accuracy78.6
67
Aspect Sentiment ClassificationRest SemEval 2014 (test)
Accuracy79.26
60
Aspect-level sentiment classificationSemEval Laptop 2014 (test)
Accuracy72.1
59
Aspect-based Sentiment ClassificationLap14
Accuracy72.05
37
Aspect extraction and sentiment classificationres 14--
26
Aspect-level Sentiment AnalysisLaptop L (test)
Accuracy72.1
24
Aspect-based Sentiment AnalysisLaptop dataset
Accuracy72.1
22
Aspect-based Sentiment Classification15Rest SemEval-2015 (test)
Accuracy0.7854
19
Aspect-based Sentiment ClassificationRest SemEval 2016 (test)
Accuracy84.74
15
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