Sci-Reasoning: A Dataset Decoding AI Innovation Patterns
By: Jiachen Liu, Maestro Harmon, Zechen Zhang
Potential Business Impact:
Teaches AI how to invent new science ideas.
While AI innovation accelerates rapidly, the intellectual process behind breakthroughs -- how researchers identify gaps, synthesize prior work, and generate insights -- remains poorly understood. The lack of structured data on scientific reasoning hinders systematic analysis and development of AI research agents. We introduce Sci-Reasoning, the first dataset capturing the intellectual synthesis behind high-quality AI research. Using community-validated quality signals and an LLM-accelerated, human-verified pipeline, we trace Oral and Spotlight papers across NeurIPS, ICML, and ICLR (2023-2025) to its key predecessors, articulating specific reasoning links in a structured format. Our analysis identifies 15 distinct thinking patterns, with three dominant strategies accounting for 52.7%: Gap-Driven Reframing (24.2%), Cross-Domain Synthesis (18.0%), and Representation Shift (10.5%). The most powerful innovation recipes combine multiple patterns: Gap-Driven Reframing + Representation Shift, Cross-Domain Synthesis + Representation Shift, and Gap-Driven Reframing + Cross-Domain Synthesis. This dataset enables quantitative studies of scientific progress and provides structured reasoning trajectories for training the next generation AI research agents.
Similar Papers
MegaScience: Pushing the Frontiers of Post-Training Datasets for Science Reasoning
Computation and Language
Teaches AI to think like scientists.
Learning to Pose Problems: Reasoning-Driven and Solver-Adaptive Data Synthesis for Large Reasoning Models
Artificial Intelligence
Teaches computers to solve harder math problems.
OctoMed: Data Recipes for State-of-the-Art Multimodal Medical Reasoning
Artificial Intelligence
Teaches AI to understand medical images and text.