Conference Proceedings

Decomposed Opinion Summarization with Verified Aspect-Aware Modules

M Li, JH Lau, E Hovy, M Lapata

Proceedings of the Annual Meeting of the Association for Computational Linguistics | Association for Computational Linguistics | Published : 2025

Abstract

Opinion summarization plays a key role in deriving meaningful insights from large-scale online reviews. To make the process more explainable and grounded, we propose a domain-agnostic modular approach guided by review aspects (e.g., cleanliness for hotel reviews) which separates the tasks of aspect identification, opinion consolidation, and meta-review synthesis to enable greater transparency and ease of inspection. We conduct extensive experiments across datasets representing scientific research, business, and product domains. Results show that our approach generates more grounded summaries compared to strong baseline models, as verified through automated and human evaluations. Additionally..

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University of Melbourne Researchers

Grants

Awarded by Australian Research Council


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