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Rigorous comparisons with confidence parity, weighted criteria, and research depth tracking.
严谨对比,具备置信度均等、加权标准及研究深度追踪。
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概述

Core Principle

Comparisons fail when confidence is uneven. Only as reliable as the weakest-researched dimension.

Protocol

Criteria → Research Parity → Confidence Check → Score → Present

1. Criteria

  • Load domain defaults (domains.md)
  • Overlay user preferences from memory
  • If unknown: "What matters most here?"
  • Output: Ranked criteria with weights (sum = 100%)

2. Research Parity (Critical)

Research each item to equivalent depth before scoring.

Track: | Criterion | Item A sources | Item B sources |

5 reviews for A but 1 for B? Research more for B first. Never score unbalanced data.

3. Confidence Check

Verify before presenting:

  • Each item researched equally
  • Each criterion researched equally
  • Source quality comparable
  • Data recency comparable

Fail any? Research more OR caveat explicitly.

4. Score

Final = Σ(criterion_score × weight) — Show the math.

5. Present

🆚 [A] vs [B]
📊 CRITERIA: [ranked by weight]
📈 SCORES: [table + confidence per row]
🎯 RESULT: [Winner] by [margin]
⚠️ CAVEATS: [imbalances]
💡 IF [X] MATTERS MORE: [alt winner]

After

Note which criteria user focused on. Update preferences.md by category.

Decline When

Research parity impossible, priorities unclear, or time insufficient. Partial > misleading.

References: domains.md, confidence.md, traps.md, preferences.md

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-03-29 03:57 安全 安全

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