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Essay Humanize Iterator

Iteratively rewrite essays to reduce AI detection scores while preserving meaning, complexity, and natural human writing style within defined linguistic metr...
迭代重写文章以降低AI检测分数,在符合既定语言指标的同时,保持原意、复杂度及自然的人类写作风格。
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#ai-detection#corpus-linguistics#education#iteration#latest#style-editing#writing

概述

Essay Humanize Iterator — Skill Specification

Purpose

Iteratively refine essays to minimize false positives from oversensitive AI detectors by removing stereotypical AI writing patterns and aligning semantic density and syntactic complexity with native human writing norms.

When to Use

  • User submits an essay and wants to reduce AI stylistic patterns that trigger false positives
  • User asks to rehumanize, iterate humanize, or improve writing naturalness
  • User wants to improve semantic density or syntactic complexity to match human writing norms
  • User mentions AI风格优化, 减少AI痕迹, 迭代改写, 写作自然度

Workflow

1. User provides essay text
2. MEASURE: Run skill/scripts/measure.py → get AI score, MDD, TTR, CW ratio
3. CHECK: If all metrics pass → output essay + report. Done.
4. REWRITE: Generate targeted revision using feedback from measurement
5. RE-MEASURE: Run measure.py on rewritten text
6. REPEAT: Loop steps 3-5 until pass or max iterations (default 3)
7. OUTPUT: Final essay + iteration report table + change summary

Measurement Axes

AxisToolPass Criteria
---------------------------
AI Pattern Score24-regex weighted scan≤ 15 / 100
MDD MeanspaCy dependency parse2.15 – 2.55
MDD Varianceper-sentence MDD spread≥ 0.016
Lexical TTRcontent-word type/token≥ 0.50
Content-Word Ratiocontent / all tokens0.52 – 0.65

See skill/references/metrics.md for formulas and baselines.

Iteration Strategy

  • Iter 1: Remove highest-weight AI patterns (em dashes, markdown, bolding, cliche metaphors)
  • Iter 2: Fix remaining patterns + increase syntactic variety
  • Iter 3: Fine-tune semantic density + register naturalness

See skill/references/iteration_strategy.md for full escalation logic.

Rewrite Engine

All rewriting is performed locally by the orchestrating LLM based on targeted feedback from measure.py. No external API calls are made.

Rules for rewriting:

  • Process the essay paragraph by paragraph
  • Follow the specific feedback instructions from build_iteration_feedback()
  • Preserve all citations, references, and factual claims
  • Do not add new sources or fabricate evidence
  • Output plain text only (no markdown formatting, no LaTeX delimiters)

Output Format

Final Essay

Plain text. Preserve the original heading structure if any. No markdown artifacts.

Iteration Report

| Iter | AI Score | MDD Mean | MDD Var  | TTR    | CW Ratio | Status |
|------|----------|----------|----------|--------|----------|--------|
|    0 |     45.2 |   2.4821 |   0.0098 | 0.4712 |   0.6280 |   FAIL |
|    1 |     18.6 |   2.3891 |   0.0142 | 0.4988 |   0.5932 |   FAIL |
|    2 |     11.3 |   2.3504 |   0.0178 | 0.5124 |   0.5801 |   PASS |

Change Summary

After the table, provide a brief bullet list of what changed across iterations:

  • Which patterns were removed
  • How sentence structure was varied
  • What vocabulary changes were made

Rules

  1. Preserve argument: The author's thesis, evidence, and logical flow must remain intact
  2. Preserve citations: Never remove, alter, or fabricate citations/references
  3. Plain text output: No markdown headings (unless input had them), no bold, no em dashes
  4. No hallucination: Do not add claims, data, or sources not in the original
  5. Idempotent measurement: Always use measure.py for scoring — do not estimate scores
  6. Early exit: If the input essay already passes all thresholds, output it unchanged with a passing report
  7. Transparency: Always show the iteration table so the user sees the convergence trajectory

Supporting Files

FilePurpose
---------------
skill/scripts/measure.pyQuantitative scorer (AI patterns + MDD + semantic density)
skill/scripts/iterate.pyIteration engine (measure + feedback generation)
skill/references/patterns.md24 AI pattern definitions and fix strategies
skill/references/metrics.mdMetric formulas, baselines, thresholds
skill/references/iteration_strategy.mdPer-iteration focus and escalation logic
data/analysis/weights.jsonCorpus-derived pattern weights

版本历史

共 1 个版本

  • v1.0.2 当前
    2026-03-31 03:12 安全 安全

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