# Research: Expert-Augmented LLM Ideation This folder contains research materials for the academic paper on the novelty-seeking system. ## Files | File | Description | |------|-------------| | `literature_review.md` | Comprehensive literature review covering semantic distance theory, conceptual blending, design fixation, LLM limitations, and related work | | `references.md` | 55+ academic references with links to papers | | `theoretical_framework.md` | The "Semantic Gravity" theoretical model and testable hypotheses | | `paper_outline.md` | Complete paper structure, experimental design, and target venues | ## Key Theoretical Contribution **"Semantic Gravity"**: LLMs exhibit a tendency to generate outputs clustered around high-probability regions of their training distribution, limiting creative novelty. Expert perspectives provide "escape velocity" to break free from this gravity. ## Core Hypotheses 1. **H1**: Multi-expert generation → higher semantic diversity 2. **H2**: Multi-expert generation → lower patent overlap (higher novelty) 3. **H3**: Diversity increases with expert count (diminishing returns ~4-6) 4. **H4**: Expert source affects unconventionality of ideas ## Target Venues - **CHI** (ACM Conference on Human Factors in Computing Systems) - **CSCW** (ACM Conference on Computer-Supported Cooperative Work) - **Creativity & Cognition** (ACM Conference) - **IJHCS** (International Journal of Human-Computer Studies) ## Next Steps 1. Design concrete experiment protocol 2. Add measurement code to existing system 3. Collect experimental data 4. Conduct human evaluation 5. Write and submit paper