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From Prediction to Justification: Aligning Sentiment Reasoning with Human Rationale via Reinforcement Learning

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While Aspect-based Sentiment Analysis (ABSA) systems have achieved high accuracy in identifying sentiment polarities, they often operate as "black boxes," lacking the explicit reasoning capabilities characteristic of human affective cognition. Humans do not merely categorize sentiment; they construct causal explanations for their judgments. To bridge this gap, we propose ABSA-R1, a large language model framework designed to mimic this ``reason-before-predict" cognitive process. By leveraging reinforcement learning (RL), ABSA-R1 learns to articulate the why behind the what, generating natural language justifications that ground its sentiment predictions. We introduce a Cognition-Aligned Reward Model (formerly sentiment-aware reward model) that enforces consistency between the generated reasoning path and the final emotional label. Furthermore, inspired by metacognitive monitoring, we implement a performance-driven rejection sampling strategy that selectively targets hard cases where the model's internal reasoning is uncertain or inconsistent. Experimental results on four benchmarks demonstrate that equipping models with this explicit reasoning capability not only enhances interpretability but also yields superior performance in sentiment classification and triplet extraction compared to non-reasoning baselines.

Shihao Zhang, Ziwei Wang, Jie Zhou, Yulan Wu, Qin Chen, Zhikai Lei, Liyang Yu, Liang Dou, Liang He• 2026

Related benchmarks

TaskDatasetResultRank
Aspect Sentiment ClassificationRest SemEval 2014 (test)
Accuracy91.32
73
Aspect-based Sentiment Classification15Rest SemEval-2015 (test)
Accuracy0.9079
32
aspect sentiment triplet extractionLap14
F1 Score69.37
29
Aspect-based Sentiment ClassificationRest SemEval 2016 (test)
Accuracy94.62
28
Aspect-based Sentiment AnalysisLap SemEval 2014 (test)
Accuracy83.86
20
Aspect Opinion Sentiment Triplet ExtractionRest 14
F181.47
17
Aspect Opinion Sentiment Triplet ExtractionRest 15
F1 Score84.81
17
Aspect Opinion Sentiment Triplet ExtractionRest 16
F1 Score84.52
17
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