In this article, we present a novel Transformer-Based Aspect-Level Sentiment Classification with Intent (TASCI) model, designed to enhance sentiment analysis by integrating aspect-level sentiment classification with intent analysis. Traditional sentiment analysis methods often overlook the nuanced relationship between the intent behind a statement and the sentiment expressed toward specific aspects of an entity. TASCI addresses this gap by first extracting aspects using a self-attention mechanism and then employing a Transformer-based model to infer the speaker's intent from preceding sentences. This dual approach allows TASCI to contextualize sentiment analysis, providing a more accurate reflection of user opinions. We validate TASCI's performance on three benchmark datasets: Restaurant, Laptop, and Twitter, achieving state-of-the-art results with an accuracy of 89.10% and a macro-F1 score of 83.38% on the Restaurant dataset, 84.81% accuracy and 78.63% macro-F1 score on the Laptop dataset, and 79.08% accuracy and 77.27% macro-F1 score on the Twitter dataset. These results demonstrate that incorporating intent analysis significantly enhances the model's ability to capture complex sentiment expressions across different domains, thereby setting a new standard for aspect-level sentiment classification.
TASCI: transformers for aspect-based sentiment analysis with contextual intent integration.
TASCI:基于方面、融合上下文意图的情感分析转换器
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作者:Chaudhry Hassan Nazeer, Kulsoom Farzana, Ullah Khan Zahid, Aman Muhammad, Khan Sajid Ullah, Albanyan Abdullah
| 期刊: | PeerJ Computer Science | 影响因子: | 2.500 |
| 时间: | 2025 | 起止号: | 2025 May 6; 11:e2760 |
| doi: | 10.7717/peerj-cs.2760 | 靶点: | ASC |
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