DIRCR: Dual-Inference Rule-Contrastive Reasoning for Solving RAVENs

April 19, 2026 Β· Grace Period Β· πŸ› ICASSP 2026

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Authors Jiachen Zhang, Chengtai Li, Jianfeng Ren, Linlin Shen, Zheng Lu, Ruibin Bai arXiv ID 2604.17584 Category cs.AI: Artificial Intelligence Citations 0 Venue ICASSP 2026
Abstract
Abstract visual reasoning remains challenging as existing methods often prioritize either global context or local row-wise relations, failing to integrate both, and lack intermediate feature constraints, leading to incomplete rule capture and entangled representations. To address these issues, we propose the Dual-Inference Rule-Contrastive Reasoning (DIRCR) model. Its core component, the Dual-Inference Reasoning Module, combines a local path for row-wise analogical reasoning and a global path for holistic inference, integrated via a gated attention mechanism. Additionally, a Rule-Contrastive Learning Module introduces pseudo-labels to construct positive and negative rule samples, applying contrastive learning to enhance feature separability and promote abstract, transferable rule learning. Experimental results on three RAVEN datasets demonstrate that DIRCR significantly enhances reasoning robustness and generalization. Codes are available at https://github.com/csZack-Zhang/DIRCR.
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