symbolic-analogy
$
npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/symbolic-analogyCompress the core contradiction of a problem into poetic imagery or oxymoron, then use the compressed conflict to reveal hidden solution directions.
SKILL.md
.github/skills/symbolic-analogyView on GitHub ↗
--- name: symbolic-analogy description: Compress core contradiction into poetic imagery/oxymoron. Use compressed conflicts to reveal hidden solution directions. execution: strategy used-by: synectics --- # Symbolic Analogy Compress the core contradiction of a problem into poetic imagery or oxymoron, then use the compressed conflict to reveal hidden solution directions. ## State Ledger | Resource | Target | Current | % | |----------|--------|---------|---| | web-search | 15 | 0 | 0% | | web-research | 5 | 0 | 0% | | paper-overview | 15 | 0 | 0% | | paper-search | 10 | 0 | 0% | | paper-research | 3 | 0 | 0% | ## HARD-GATE Cannot exit strategy until ≥80% of each budget line is consumed OR yield targets are met with justification for remaining budget. ## Available Tactics | Tactic | Role | |--------|------| | compressed-conflict | Generate oxymorons and extract idea directions | ## Available SOPs | SOP | Role | |-----|------| | symbolic-compression | Compress contradiction into 2-3 word oxymoron | | analogy-chain | Deepen symbolic imagery through layers | | springboard-launch | Convert symbolic insights into solutions | | synectics-synthesis | Synthesize symbolic analogy outputs | ## Execution Guidance 1. **Identify contradiction**: Find the core tension in the problem 2. **Compress**: Reduce to a 2-3 word oxymoron (e.g., "familiar surprise") 3. **Interpret**: Explore what the oxymoron suggests as solution directions 4. **Deepen**: Chain the symbolic image through analogy layers 5. **Extract**: Convert symbolic insights into concrete mechanisms 6. **Validate**: Check that solutions actually address the original contradiction
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.