Aspect sentiment coherency is an intriguing yet underexplored topic in the field of aspect-based sentiment classification. This concept reflects the common pattern where adjacent aspects often share similar sentiments. Despite its prevalence, current studies have not fully recognized the potential of modeling aspect sentiment coherency, including its implications in adversarial defense. To model aspect sentiment coherency, we propose a novel local sentiment aggregation (LSA) paradigm based on constructing a differential-weighted sentiment aggregation window. We have rigorously evaluated our model through experiments, and the results affirm the proficiency of LSA in terms of aspect coherency prediction and aspect sentiment classification. For instance, it outperforms existing models and achieves state-of-the-art sentiment classification performance across five public datasets. Furthermore, we demonstrate the promising ability of LSA in ABSC adversarial defense, thanks to its sentiment coherency modeling. To encourage further exploration and application of this concept, we have made our code publicly accessible. This will provide researchers with a valuable tool to delve into sentiment coherency modeling in future research.
LSA: Modeling Aspect Sentiment Coherency via Local Sentiment Aggregation
A local sentiment aggregation paradigm (LSA) addresses implicit aspect sentiment modeling in aspect-based sentiment classification by leveraging local sentiment dependencies and differential weighting.
- Year
- 2021
- Venue
- arXiv 2021
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- 2
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- arxiv.org/abs/2110.08604v4ARXIV-DEFAULT
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