Files
gbanyan 43c025e060 feat: Add experiments framework and novelty-driven agent loop
- Add complete experiments directory with pilot study infrastructure
  - 5 experimental conditions (direct, expert-only, attribute-only, full-pipeline, random-perspective)
  - Human assessment tool with React frontend and FastAPI backend
  - AUT flexibility analysis with jump signal detection
  - Result visualization and metrics computation

- Add novelty-driven agent loop module (experiments/novelty_loop/)
  - NoveltyDrivenTaskAgent with expert perspective perturbation
  - Three termination strategies: breakthrough, exhaust, coverage
  - Interactive CLI demo with colored output
  - Embedding-based novelty scoring

- Add DDC knowledge domain classification data (en/zh)
- Add CLAUDE.md project documentation
- Update research report with experiment findings

Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com>
2026-01-20 10:16:21 +08:00
..
2026-01-05 22:32:08 +08:00
2026-01-05 22:32:08 +08:00

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