Attention Capsule Network for Aspect-Level Sentiment Classification

As a fine-grained classification problem, aspect-level sentiment classification predicts the sentiment polarity for different aspects in context. To address this issue, researchers have widely used attention mechanisms to abstract the relationship between context and aspects. Still, it is difficult...

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Veröffentlicht in:KSII transactions on Internet and information systems 2021-04, Vol.15 (4), p.1275
Hauptverfasser: Deng, Yu, Lei, Hang, Li, Xiaoyu, Lin, Yiou, Cheng, Wangchi, Yang, Shan
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Lei, Hang
Li, Xiaoyu
Lin, Yiou
Cheng, Wangchi
Yang, Shan
description As a fine-grained classification problem, aspect-level sentiment classification predicts the sentiment polarity for different aspects in context. To address this issue, researchers have widely used attention mechanisms to abstract the relationship between context and aspects. Still, it is difficult to effectively obtain a more profound semantic representation, and the strong correlation between local context features and the aspect-based sentiment is rarely considered. In this paper, a hybrid attention capsule network for aspect-level sentiment classification (ABASCap) was proposed. In this model, the multi-head self-attention was improved, and a context mask mechanism based on adjustable context window was proposed, so as to effectively obtain the internal association between aspects and context. Moreover, the dynamic routing algorithm and activation function in capsule network were optimized to meet the task requirements. Finally, sufficient experiments were conducted on three benchmark datasets in different domains. Compared with other baseline models, ABASCap achieved better classification results, and outperformed the state-of-the-art methods in this task after incorporating pre-training BERT. Keywords: Capsule Network, Convolutional Neural Network, Aspect-level Sentiment Classification, Natural Language Processing, Attention Mechanism
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To address this issue, researchers have widely used attention mechanisms to abstract the relationship between context and aspects. Still, it is difficult to effectively obtain a more profound semantic representation, and the strong correlation between local context features and the aspect-based sentiment is rarely considered. In this paper, a hybrid attention capsule network for aspect-level sentiment classification (ABASCap) was proposed. In this model, the multi-head self-attention was improved, and a context mask mechanism based on adjustable context window was proposed, so as to effectively obtain the internal association between aspects and context. Moreover, the dynamic routing algorithm and activation function in capsule network were optimized to meet the task requirements. Finally, sufficient experiments were conducted on three benchmark datasets in different domains. Compared with other baseline models, ABASCap achieved better classification results, and outperformed the state-of-the-art methods in this task after incorporating pre-training BERT. 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subjects Algorithms
Analysis
Computational linguistics
Language processing
Methods
Natural language interfaces
Neural networks
Social networks
title Attention Capsule Network for Aspect-Level Sentiment Classification
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