random-stimulus-entry
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npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/random-stimulus-entryUse random word/paper/concept as thinking entry point. Genuine randomness breaks fixation patterns and forces the mind into unexplored territory.
SKILL.md
.github/skills/random-stimulus-entryView on GitHub ↗
--- name: random-stimulus-entry description: Random word/paper/concept as thinking entry point. Use genuine randomness to escape fixation and open unexpected solution paths. execution: strategy used-by: cross-domain-discovery --- # Random Stimulus Entry Use random word/paper/concept as thinking entry point. Genuine randomness breaks fixation patterns and forces the mind into unexplored territory. ## State Ledger | Resource | Target | Current | % | |----------|--------|---------|---| | web-search | 20 | 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 | |--------|------| | domain-divergence | Ensure stimuli come from genuinely unrelated domains | | bridge-validation | Validate that forced connections produce real insight | ## Available SOPs | SOP | Role | |-----|------| | random-word-stimulus | Generate random word stimuli and force connections | | random-paper-entry | Select random paper as stimulus entry point | | forced-connection | Force connection between stimulus and problem | | abstraction-extraction | Extract transferable principle from stimulus domain | | cross-domain-synthesis | Synthesize all stimulus-derived ideas | ## Execution Guidance 1. **Select stimulus type**: Choose random word, random paper, or random concept 2. **Generate stimulus**: Use random-word-stimulus or random-paper-entry SOP 3. **Force connection**: Apply forced-connection SOP to bridge stimulus→problem 4. **Extract principle**: If connection is promising, abstract the underlying mechanism 5. **Iterate**: Generate ≥5 stimuli, force connections for each 6. **Filter**: Use bridge-validation to separate genuine insights from surface associations 7. **Synthesize**: Combine validated connections into solution concepts
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