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npx versuz@latest install hiyenwong-ai-collection-collection-skills-interdisciplinary-discoverygit clone https://github.com/hiyenwong/ai_collection.gitcp ai_collection/SKILL.MD ~/.claude/skills/hiyenwong-ai-collection-collection-skills-interdisciplinary-discovery/SKILL.md--- name: interdisciplinary-discovery description: "Discover interdisciplinary research connections using knowledge graph analysis (PageRank, Louvain, vector similarity). Use when analyzing cross-domain research, finding unexpected connections, or exploring interdisciplinary patterns. Keywords: 跨学科发现, interdisciplinary discovery, kg analysis, 知识图谱分析, find research connections, discover cross-domain patterns." --- # Interdisciplinary Discovery Discover unexpected research connections across disciplines using knowledge graph analysis. ## Activation Keywords - 跨学科发现 - interdisciplinary discovery - 知识图谱分析 - kg analysis - 找研究关联 - discover cross-domain patterns - interdisciplinary research - 知识图谱发现 ## Tools Used - `exec`: Run kg_tool CLI commands - `sqlite3`: Direct database queries - `web_search`: Search related papers - `read`: Load skill references - `write`: Save analysis results ## Quick Workflow ### 1. Identify Important Nodes ```bash kg_tool pagerank kg.db ``` Returns top entities by influence. ### 2. Find Research Communities ```bash kg_tool louvain kg.db ``` Detects clusters of related research. ### 3. Discover Strong Connections ```bash kg_tool similar kg.db <entity_id> 5 ``` Finds entities with high vector similarity (>0.8 = strong connection). ### 4. Analyze Patterns - PageRank: Domain influence - Louvain: Research clusters - Vector similarity: Cross-domain bridges ### 5. Extract Insights Document findings in `memory/YYYY-MM-DD.md`. ## When to Use **Trigger signals:** - User asks "find connections between X and Y" - Need to explore interdisciplinary patterns - Research synthesis tasks - Knowledge graph exploration **Typical patterns:** - Quantum finance connections (0.87 similarity) - Neuroscience-quantum bridges - AI-physics intersections ## References - **kg_tool usage**: See [references/kg-tool-guide.md](references/kg-tool-guide.md) - **Analysis patterns**: See [references/analysis-patterns.md](references/analysis-patterns.md) ## Best Practices 1. **Start with PageRank** - Find influential nodes first 2. **Check multiple entities** - Don't rely on single similarity search 3. **Threshold >0.8** - Strong connections typically have >0.8 similarity 4. **Cross-reference communities** - Compare Louvain results with similarity 5. **Document patterns** - Always save to memory/ ## Examples ### Example: Quantum Finance Discovery ``` kg_tool pagerank kg.db # Entity 343: Quantum Algorithms (0.045) kg_tool similar kg.db 128 5 # quantum economics (0.8764) # Quantum Computing for Finance (0.8445) # Insight: Strong quantum-finance connection discovered ``` ### Example: Neuroscience-Quantum Bridge ``` kg_tool similar kg.db 9 5 # Brain connectivity tools (0.1522) # Spiking neural networks (0.1413) # Insight: Quantum cryptography linked to neuroscience ``` ## Integration with Research Workflow This skill integrates with: - `arxiv-search`: Find papers to add to KG - `skill-extractor`: Extract patterns from discoveries - `weekly_topics.py`: Daily research automation ## Limitations - Requires kg.db with vectors (640+ embeddings) - Similarity search needs entity with existing vector - Database may be locked during concurrent writes ## Notes - Part of hourly research automation workflow - Works best with sqlite-knowledge-graph - Use proxy for arXiv searches: http://127.0.0.1:7890