Exploring aspect-based sentiment quadruple extraction with implicit aspects, opinions, and ChatGPT: a comprehensive survey

Author:

Zhang Hao,Cheah Yu-N,Alyasiri Osamah Mohammed,An Jieyu

Abstract

AbstractIn contrast to earlier ABSA studies primarily concentrating on individual sentiment components, recent research has ventured into more complex ABSA tasks encompassing multiple elements, including pair, triplet, and quadruple sentiment analysis. Quadruple sentiment analysis, also called aspect-category-opinion-sentiment quadruple Extraction (ACOSQE), aims to dissect aspect terms, aspect categories, opinion terms, and sentiment polarities while considering implicit sentiment within sentences. Nonetheless, a comprehensive overview of ACOSQE and its corresponding solutions is currently lacking. This is the precise gap that our survey seeks to address. To be more precise, we systematically reclassify all subtasks of ABSA, reorganizing existing research from the perspective of the involved sentiment elements, with a primary focus on the latest advancements in the ACOSQE task. Regarding solutions, our survey offers a comprehensive summary of the state-of-the-art utilization of language models within the ACOSQE task. Additionally, we explore the application of ChatGPT in sentiment analysis. Finally, we review emerging trends and discuss the challenges, providing insights into potential future directions for ACOSQE within the broader context of ABSA.

Publisher

Springer Science and Business Media LLC

Subject

Artificial Intelligence,Linguistics and Language,Language and Linguistics

Reference152 articles.

1. Al-Janabi OM, Ibrahim MK, Kanaan-Jebna A et al (2022) An improved bi-LSTM performance using DT-we for implicit aspect extraction. 2022 International Conference on Data Science and Intelligent Computing (ICDSIC). IEEE, pp 14–19

2. Bao X, Wang Z, Jiang X et al (2022) Aspect-based sentiment analysis with opinion tree generation. IJCAI 2022:4044–4050

3. Barnes J, Kurtz R, Oepen S, et al (2021) Structured sentiment analysis as dependency graph parsing. In: Proceedings of the 59th annual meeting of the association for computational linguistics and the 11th international joint conference on natural language processing, vol 1: Long Papers, pp 3387–3402

4. Blair-Goldensohn S, Hannan K, McDonald R, et al (2008) Building a sentiment summarizer for local service reviews. WWW2008 workshop on NLP challenges in the information explosion era

5. Brown T, Mann B, Ryder N et al (2020) Language models are few-shot learners. Adv Neural Inf Process Syst 33:1877–1901

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