dominance-check
$
npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/dominance-checkIdentifies dominated and non-dominated alternatives using Pareto dominance in a score matrix.
- Solves multi-criteria decision problems by eliminating inferior options.
- Requires a score matrix with alternatives and their criteria scores.
- Applies pairwise comparisons to determine dominance relationships.
- Returns a list of dominated alternatives and the Pareto front.
SKILL.md
.github/skills/dominance-checkView on GitHub ↗
--- name: dominance-check description: Identify dominated and non-dominated alternatives in a score matrix using Pareto dominance. execution: subagent prompt: ./prompt.md input: score_matrix (object) used-by: multi-criteria-scoring --- # Dominance Check Identify dominated alternatives (where another alternative is no worse on all criteria and strictly better on at least one) and non-dominated alternatives (Pareto front) in the scoring matrix. ## Execution Subagent receives the scoring matrix, performs pairwise dominance relationship checks, and outputs the dominance graph and classification results. ## Why Subagent Dominance checking requires O(n^2 x m) pairwise comparisons, logic-intensive but self-contained, suitable for independent execution. ## HARD-GATE Each "dominated" determination must specify the dominating alternative, and verify the strict definition of dominance (no worse on all criteria + strictly better on at least one).
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