Twin Towers End to End model for aspect-based sentiment analysis

Ziliang Li, Yuqian Song,Xiaoling Lu, Miao Liu

Expert Systems with Applications(2024)

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摘要
Aspect-based sentiment analysis (ABSA) aims to conduct fine-grained sentiment analysis, necessitating the extraction of three key components: target entity, aspect category and sentiment polarity. These three components collectively form an integrated ABSA task known as TASD (Target-Aspect-Sentiment jointly Detection). Most of existing approaches on ABSA usually employ Recurrent neural networks(RNNs), Convolutional neural networks(CNNs) or pre-training models such as Bidirectional Encoder Representations from Transformers(BERT). However, they have some common weaknesses. First, most of the existing methods focus on one or two sub-tasks instead of triplet detection, thus they don’t establish an end-to-end (training a complex learning system represented by a single model) ABSA model and can not utilize the relevance of multiple ABSA sub-tasks during training. Second, they can not achieve accuracy and efficiency simultaneously due to the coupling of context and given aspects. Third, they are poor in recognizing implicit targets. To tackle these limitations, this paper proposes a novel method named the Twin Towers End to End model (TTEE) to solve TASD task. It transforms complex TASD task into a simple end-to-end multi-task framework, simultaneously conducting target and aspect-sentiment detection. It builds twin towers system based on BERT or its updated versions to decouple context and given aspects, which can reduce redundant calculation to improve computational efficiency significantly. It offers great advantage to identify implicit target entity and its associated aspect-sentiment in the context without introducing extra model architecture. Experiments on three real datasets on different domains demonstrate that our approach not only achieves better performance on various evaluation metrics, but also has high efficiency in training and inference phases, over a wide range of sample size and number of aspect categories.
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关键词
Aspect-based sentiment analysis,BERT,Twin towers,End to end,Implicit target
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