analogy-extraction
$
npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/analogy-extractionExtract transferable structural principles from source domains.
SKILL.md
.github/skills/analogy-extractionView on GitHub ↗
--- name: analogy-extraction description: Extract transferable structural principles from source domains. Orchestrates source identification → abstraction → structural mapping → transfer validation. execution: tactic used-by: cross-domain-discovery, synectics, biomimicry --- # Analogy Extraction Extract transferable structural principles from source domains. ## Stages ### Stage 1: Source Identification Identify candidate source domains using domain-scanning SOP. Evaluate each for structural similarity depth (surface/structural/systemic). ### Stage 2: Abstraction For each promising source, extract the abstract principle using abstraction-extraction or biological-strategy-extraction SOP. Strip domain-specific details to reveal the transferable mechanism. ### Stage 3: Structural Mapping Map source structure to target domain. Identify: corresponding elements, missing elements (gaps), extra elements (opportunities). Use structural-mapping SOP. ### Stage 4: Transfer Validation Assess mapping quality: Is the analogy surface-level (shared labels) or deep (shared relational structure)? Use analogy-quality-assessment SOP. Only deep analogies warrant transfer. ## Minimum Yield | Metric | Floor | |--------|-------| | Source domains scanned | ≥5 | | Abstractions extracted | ≥3 | | Structural mappings completed | ≥3 | | Validated deep analogies | ≥2 | ## Available SOPs | SOP | Role | |-----|------| | domain-scanning | Stage 1 — find candidate source domains | | web-search | Stage 1 — supplement domain search | | paper-overview | Stage 1 — find academic analogies | | abstraction-extraction | Stage 2 — extract abstract principles | | structural-mapping | Stage 3 — map source→target structure | | analogy-quality-assessment | Stage 4 — validate mapping depth | | novelty-scoring | Post — score resulting ideas | | idea-synthesis | Post — synthesize into coherent concepts |
More from yogsoth-ai/de-anthropocentric-research-engine
- abductive-hypothesis-generationStrategy: 面对异常的最佳解释推理
- ablation-brainstormRemove components one by one, observe system changes to reveal hidden dependencies and generate ideas from structural gaps.
- ablation-component-mappingMap system architecture to ablatable units for ablation studies
- ablation-designDesign ablation studies to isolate component contributions in ML systems
- ablation-executionRemove components one by one from a system, record the response/impact of each removal.
- abp-vulnerability-classificationClassify assumptions on 2 axes — load-bearing (how much conclusion depends on it) × vulnerable (how likely to be false). Focuses attention on High-Load × High-Vulnerable quadrant.
- abstraction-extractionExtract abstract principles from concrete domain cases. Strips domain-specific details to reveal transferable mechanisms.
- abstraction-ladderPerform bisociation at multiple abstraction levels
- abstraction-ladderingMove between concrete and abstract framings — 3 levels up (Why?) and 3 levels down (How?) to find the most productive research level.
- abstraction-to-designAbstract biological principle to design principle. Bridge from biology to engineering.