Triple GNNs: Introducing Syntactic and Semantic Information for Conversational Aspect-Based Quadruple Sentiment Analysis
Conversational Aspect-Based Sentiment Analysis (DiaASQ) aims to detect quadruples \{target, aspect, opinion, sentiment polarity\} from given dialogues. In DiaASQ, elements constituting these quadruples are not necessarily confined to individual sentences but may span across multiple utterances withi...
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Zusammenfassung: | Conversational Aspect-Based Sentiment Analysis (DiaASQ) aims to detect
quadruples \{target, aspect, opinion, sentiment polarity\} from given
dialogues. In DiaASQ, elements constituting these quadruples are not
necessarily confined to individual sentences but may span across multiple
utterances within a dialogue. This necessitates a dual focus on both the
syntactic information of individual utterances and the semantic interaction
among them. However, previous studies have primarily focused on coarse-grained
relationships between utterances, thus overlooking the potential benefits of
detailed intra-utterance syntactic information and the granularity of
inter-utterance relationships. This paper introduces the Triple GNNs network to
enhance DiaAsQ. It employs a Graph Convolutional Network (GCN) for modeling
syntactic dependencies within utterances and a Dual Graph Attention Network
(DualGATs) to construct interactions between utterances. Experiments on two
standard datasets reveal that our model significantly outperforms
state-of-the-art baselines. The code is available at
\url{https://github.com/nlperi2b/Triple-GNNs-}. |
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DOI: | 10.48550/arxiv.2403.10065 |