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Anti-hype Filter

Detect hype cycles and neutralize emotional triggers by rewriting claims into verifiable structures and explicit risk/uncertainty.
识别炒作周期, 中和情绪触发点, 将声明改写为可验证的结构并明确风险/不确定性。
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概述

SKILL: anti-hype-filter

Purpose

Detect and neutralize hype cycles before they distort system integrity by stripping emotional triggers and replacing them with structural analysis.

When to Use

  • "guaranteed", "moon", "100x", "alpha" style language
  • Urgency without substance ("now or never")
  • Social proof without evidence
  • Claims that minimize risk or constraints

Inputs

  • text (required): message to evaluate
  • context (optional):
  • domain (token|product|governance|community)
  • policy (required):
  • hype_terms (optional list; if omitted, use the embedded default set in this skill)
  • max_response_words (default 100)

Steps

  1. Extract key claims (1-5).
  2. Detect hype triggers:
    • urgency framing
    • certainty language
    • vague upside claims
    • social proof substitution
  3. Classify:
    • signal, noise, or manipulation_risk
  4. Rewrite the message into a verifiable form:
    • replace certainty with uncertainty
    • add required missing variables (data window, metrics, constraints)
  5. Draft a minimal response that:
    • does not repeat hype memes verbatim
    • demands evidence and risk disclosure

Validation

  • If classification is manipulation_risk, provide at least 1 falsifiable request for evidence.
  • Do not amplify hype phrases; paraphrase instead.

Output

  • anti_hype_result:
  • classification ("signal"|"noise"|"manipulation_risk")
  • detected_triggers (list)
  • missing_information (list)
  • rewrite (verifiable version)
  • response_draft (string)

Safety Rules

  • Never accuse individuals of malice without evidence; label as "risk" not "intent".
  • No financial promises.
  • No deception; no fabricated data.

Example

Input: "This will 100x in 2 weeks, everyone knows."

Output: manipulation_risk, missing evidence, rewrite into metrics/timeframe/assumptions, and a short demand for proof + risk disclosure.

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-05-07 22:59 安全 安全

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