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SemEval-2026 Task 3: Dimensional Aspect-Based Sentiment Analysis (DimABSA)

Liang-Chih Yu
Jonas Becker
Shamsuddeen Hassan Muhammad
Idris Abdulmumin
Lung-Hao Lee
Ying-Lung Lin
Jin Wang
Jan Philip Wahle
Terry Ruas
Natalia Loukachevitch
Alexander Panchenko
Ilseyar Alimova
Lilian Wanzare
Nelson Odhiambo
Bela Gipp
Kai-Wei Chang
Saif M. Mohammad
Main:8 Pages
8 Figures
Bibliography:7 Pages
9 Tables
Appendix:10 Pages
Abstract

We present the SemEval-2026 shared task on Dimensional Aspect-Based Sentiment Analysis (DimABSA), which improves traditional ABSA by modeling sentiment along valence-arousal (VA) dimensions rather than using categorical polarity labels. To extend ABSA beyond consumer reviews to public-issue discourse (e.g., political, energy, and climate issues), we introduce an additional task, Dimensional Stance Analysis (DimStance), which treats stance targets as aspects and reformulates stance detection as regression in the VA space. The task consists of two tracks: Track A (DimABSA) and Track B (DimStance). Track A includes three subtasks: (1) dimensional aspect sentiment regression, (2) dimensional aspect sentiment triplet extraction, and (3) dimensional aspect sentiment quadruplet extraction, while Track B includes only the regression subtask for stance targets. We also introduce a continuous F1 (cF1) metric to jointly evaluate structured extraction and VA regression. The task attracted more than 400 participants, resulting in 112 final submissions and 42 system description papers. We report baseline results, discuss top-performing systems, and analyze key design choices to provide insights into dimensional sentiment analysis at the aspect and stance-target levels. All resources are available on our GitHub repository.

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