MoRI: Learning Motivation-Grounded Reasoning for Scientific Ideation in Large Language Models
arXiv cs.CL / 3/20/2026
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Key Points
- MoRI introduces a framework that enables LLMs to explicitly learn the reasoning process from research motivations to scientific methodologies for ideation.
- The approach first uses supervised fine-tuning to generate a research motivation from context, and then trains with reinforcement learning using a composite reward that combines entropy-aware information gain to elicit high-complexity, ground-truth-grounded technical details and a contrastive semantic gain to keep the reasoning aligned with scientifically valid solutions.
- Empirical results show MoRI significantly outperforms strong commercial LLMs and complex agentic baselines across dimensions like novelty, technical rigor, and feasibility.
- The authors will release the code on GitHub to support reproducibility and broader adoption.
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