This systematic literature review examines trends and high-level patterns in aspect-based sentiment analysis (ABSA) research over nearly two decades. The key findings are:
Research application domains and dataset domains are significantly skewed, with the majority of studies focusing on product/service reviews and using datasets from this domain. Only a small proportion of studies targeted other domains like healthcare, education, and policy.
The SemEval restaurant and laptop review datasets dominate the ABSA literature, accounting for over 78% of the studies using datasets with 10 or more samples. This heavy reliance on a few benchmark datasets, especially from a narrow domain, may limit the generalizability of ABSA solutions.
While deep learning (DL) approaches have rapidly overtaken traditional machine learning and linguistic methods since 2017, the latter approaches remain a steady presence in ABSA research. DL models, especially those based on recurrent neural networks and attention mechanisms, are the most common solution approach.
The lack of dataset diversity, especially in important public sector domains like healthcare, education, and policy, is a significant issue. Many studies in these domains had to create their own datasets, indicating a scarcity of open-access resources.
The findings suggest that the domain-dependent nature of ABSA and the skewed distribution of research effort and dataset resources could be hindering the development of generalizable ABSA solutions across different application areas. The ABSA research community should focus on expanding dataset diversity, especially in underrepresented domains, to enable more robust and versatile ABSA systems.
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