2024
DOI: 10.1109/taffc.2023.3291730
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Encoding Syntactic Information into Transformers for Aspect-Based Sentiment Triplet Extraction

Abstract: Aspect-based sentiment triplet extraction (ASTE) aims to extract triplets consisting of aspect terms and their associated opinion terms and sentiment polarities from sentences, a relatively new and challenging subtask of aspect-based sentiment analysis (ABSA). Previous studies have used either pipeline models or unified tagging schema models. These models ignore the syntactic relationships between the aspect and its corresponding opinion words, which leads them to mistakenly focus on syntactically unrelated wo… Show more

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Cited by 4 publications
(1 citation statement)
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“…4 Experiments Baseline Models We categorize the comparison models into the following three types: 1.Sequence tagging-based models, such as OTE-MTL , GTS (Wu et al, 2020), JET (Xu et al, 2020b), EMC-GCN (Chen et al, 2022a), SyMux (Fei et al, 2022), SCEDD (Zhang et al, 2022b), BDTF (Zhang et al, 2022a), SA-Transformer (Yuan et al, 2023), STAGE .…”
Section: Label-driven Semantic Alignmentmentioning
confidence: 99%
“…4 Experiments Baseline Models We categorize the comparison models into the following three types: 1.Sequence tagging-based models, such as OTE-MTL , GTS (Wu et al, 2020), JET (Xu et al, 2020b), EMC-GCN (Chen et al, 2022a), SyMux (Fei et al, 2022), SCEDD (Zhang et al, 2022b), BDTF (Zhang et al, 2022a), SA-Transformer (Yuan et al, 2023), STAGE .…”
Section: Label-driven Semantic Alignmentmentioning
confidence: 99%