Sparking Scientific Creativity via LLM-Driven Interdisciplinary Inspiration
Abstract
Idea-Catalyst is a framework that supports interdisciplinary research by identifying insights across domains to enhance creative reasoning in scientific discovery.
Despite interdisciplinary research leading to larger and longer-term impact, most work remains confined to single-domain academic silos. Recent AI-based approaches to scientific discovery show promise for interdisciplinary research, but many prioritize rapidly designing experiments and solutions, bypassing the exploratory, collaborative reasoning processes that drive creative interdisciplinary breakthroughs. As a result, prior efforts largely prioritize automating scientific discovery rather than augmenting the reasoning processes that underlie scientific disruption. We present Idea-Catalyst, a novel framework that systematically identifies interdisciplinary insights to support creative reasoning in both humans and large language models. Starting from an abstract research goal, Idea-Catalyst is designed to assist the brainstorming stage, explicitly avoiding premature anchoring on specific solutions. The framework embodies key metacognitive features of interdisciplinary reasoning: (a) defining and assessing research goals, (b) awareness of a domain's opportunities and unresolved challenges, and (c) strategic exploration of interdisciplinary ideas based on impact potential. Concretely, Idea-Catalyst decomposes an abstract goal (e.g., improving human-AI collaboration) into core target-domain research questions that guide the analysis of progress and open challenges within that domain. These challenges are reformulated as domain-agnostic conceptual problems, enabling retrieval from external disciplines (e.g., Psychology, Sociology) that address analogous issues. By synthesizing and recontextualizing insights from these domains back into the target domain, Idea-Catalyst ranks source domains by their interdisciplinary potential. Empirically, this targeted integration improves average novelty by 21% and insightfulness by 16%, while remaining grounded in the original research problem.
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This paper introduces Idea-Catalyst, a metacognition-driven framework for helping humans and language models move beyond within-domain brainstorming.
Rather than rushing to propose answers, the system first clarifies what a research problem is really asking, pinpoints where current approaches still fall short, and then looks to other scientific fields for ideas that could help close those gaps. We found that:
- Without forcing LLMs to explore other domains, they only explore different subfields of the same domain for "interdisciplinary research".
- Average novelty improves by 21% over the strongest retrieval baseline.
- Average insightfulness improves by 16% while staying grounded in the target problem.
- Human study participants found the framework effective for early-stage ideation.
Check out our paper, code, dataset, and blog:
- ๐Paper: https://arxiv.org/abs/2603.12226
- ๐ปCode: https://github.com/pkargupta/idea_catalyst
- ๐๏ธData: https://huggingface.co/datasets/pkargupta/idea_catalyst
- ๐ฌBlog: https://pkargupta.github.io/idea_catalyst.html
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