chore: rebuild dist/openclaw from source
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6 changed files with 378 additions and 350 deletions
28
dist/openclaw/SKILL.md
vendored
28
dist/openclaw/SKILL.md
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@ -44,6 +44,20 @@ description: |
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- 读取 `writing-config.yaml`(如存在),检查是否有 AI 特征参数(emotional_arc: flat、paragraph_rhythm: structured、closing_style: summary)
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- 读取 `history.yaml` 最近 5 篇,检查 persona 使用和 web_search 降级情况
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4. 综合输出自然语言报告 + 按优先级排序的改进建议
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- 用户说"优化写作参数"/"优化参数"/"跑优化" → 执行以下流程:
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1. 读取 `{baseDir}/writing-config.yaml`(不存在则从 `writing-config.example.yaml` 复制)
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2. 用户可指定迭代次数(默认 3),如"优化参数跑 5 轮"
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3. **迭代循环**(每轮):
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a. 用当前 writing-config.yaml 参数写一篇 500 字测试短文(主题:用户指定或"AI Agent 行业观察")
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b. 保存到 `{baseDir}/output/optimize-test.md`
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c. `python3 {baseDir}/scripts/humanness_score.py {baseDir}/output/optimize-test.md --json --tier3 {agent_tier3_score}`
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d. Agent 做 Tier 3 分析(读测试短文,评估风格漂移/密度波浪/连贯性打破/整体人感,输出 0-1 分数传入 --tier3)
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e. 解析 JSON 中 `param_scores`,找到得分最低的 1-2 个参数
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f. 调整 writing-config.yaml 中对应参数(方向:让该维度更"人类")
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g. 记录本轮:迭代编号、composite_score、调整的参数、旧值→新值
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4. 循环结束后,保留 composite_score 最低(最人类)的 writing-config.yaml
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5. 输出优化报告:起始分 → 最终分,每轮调整,最终参数
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6. 提示:"参数已优化。下次写文章时自动使用新参数。"
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- 用户说"更新"/"更新 WeWrite"/"升级" → 在 `{baseDir}` 执行 `git pull origin main`,完成后告知版本变化
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---
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@ -211,6 +225,19 @@ web_search: "{选题关键词} 数据 报告 2025 2026"
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不通过 → 定向重写该段落。3 次仍不过 → 标注跳过。
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**5b-2. 脚本验证**(补充逐项检查):
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Agent 在 5b 逐项检查时同步完成 Tier 3 评估(风格漂移、密度波浪、连贯性打破、整体人感),产出 0-1 分数。
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```bash
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python3 {baseDir}/scripts/humanness_score.py {article_path} --json --tier3 {agent_tier3_score}
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```
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解读 JSON 中 `composite_score`:
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- < 30 → 通过,继续 Step 6
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- 30-50 → 查看 `param_scores` 中最低分项,定向重写对应段落
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- \> 50 → 重大问题,逐个低分项修复,最多 3 轮
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---
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### Step 6: 视觉 AI
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@ -302,6 +329,7 @@ python3 {baseDir}/toolkit/cli.py preview {markdown} --theme {theme} --no-open -o
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| 学习我的修改 | `读取: {baseDir}/references/learn-edits.md` |
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| 做一个小绿书/图片帖 | `python3 {baseDir}/toolkit/cli.py image-post img1.jpg img2.jpg -t "标题"` |
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| 诊断配置 / 检查反AI / 为什么AI检测没过 | `python3 {baseDir}/scripts/diagnose.py --json` + LLM 交叉分析 |
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| 优化写作参数 / 优化参数 | 迭代循环:写测试短文 → 打分 → 调参(见辅助功能) |
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---
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2
dist/openclaw/VERSION
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2
dist/openclaw/VERSION
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@ -1 +1 @@
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1.2.0
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1.3.0
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4
dist/openclaw/scripts/diagnose.py
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4
dist/openclaw/scripts/diagnose.py
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@ -157,7 +157,7 @@ def check_enhancements():
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else:
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checks.append(make_check(
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"enhancement", "writing_config", "warn",
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"not found → using defaults (run optimize_loop.py to tune)",
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"not found → using defaults (say '优化参数' to tune)",
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))
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# playbook.md
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@ -240,7 +240,7 @@ def compute_summary(checks):
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elif name == "playbook":
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recs.append('Edit a generated article, then say "学习我的修改" to build playbook.md')
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elif name == "writing_config":
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recs.append('Run: python3 scripts/optimize_loop.py --topic "your topic" --iterations 10')
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recs.append('Say "优化参数" to run the optimization loop')
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elif name == "history_articles":
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recs.append("Generate your first article to start building history")
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elif name == "dimension_variance":
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538
dist/openclaw/scripts/humanness_score.py
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538
dist/openclaw/scripts/humanness_score.py
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@ -1,20 +1,26 @@
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#!/usr/bin/env python3
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"""
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Fixed humanness scoring pipeline for WeWrite optimization loop.
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Humanness scoring for WeWrite articles.
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Two-layer scoring inspired by autoresearch + the "objective checklist + subjective feel" pattern:
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Three-tier evaluation aligned with writing-guide.md's anti-AI checklist:
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Layer 1: Objective checklist (yes/no, deterministic, won't drift)
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Layer 2: Subjective reader-feel (LLM judge, 1-10)
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Tier 1 (Statistical, 50%): 6 checks measuring statistical properties
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that AI detectors analyze (burstiness, distribution, variance).
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Tier 2 (Pattern, 30%): 5 checks for specific linguistic patterns
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(banned words, broken sentences, real sources).
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Tier 3 (LLM, 20%): Semantic analysis done by the agent in SKILL.md
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(style drift, density waves, coherence). Passed via --tier3 flag.
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Composite = Layer1 pass_rate * 0.6 + Layer2 normalized * 0.4
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Each check outputs a continuous 0-1 score and maps to a writing-config
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parameter, so the optimization loop knows which knob to turn.
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DO NOT MODIFY this file during optimization. It is the fixed evaluation function.
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Standalone mode (no --tier3): weights redistribute to T1=62.5%, T2=37.5%.
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Usage:
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python3 humanness_score.py article.md
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python3 humanness_score.py article.md --verbose
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python3 humanness_score.py article.md --json
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python3 humanness_score.py article.md # single score
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python3 humanness_score.py article.md --verbose # detailed report
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python3 humanness_score.py article.md --json # full JSON
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python3 humanness_score.py article.md --json --tier3 0.7 # with agent score
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"""
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import argparse
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@ -25,7 +31,7 @@ from pathlib import Path
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# ============================================================
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# Layer 1: Objective Checklist (deterministic yes/no)
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# Constants
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# ============================================================
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BANNED_WORDS = [
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@ -39,255 +45,399 @@ BANNED_WORDS = [
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"正如我们所看到的",
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]
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# Real-source indicators: named people, organizations, specific publications
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REAL_SOURCE_PATTERNS = [
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r'[A-Z][a-z]+\s+[A-Z][a-z]+', # Named person (English)
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r'[\u4e00-\u9fff]{2,4}(?:表示|指出|认为|写道|提到|说过)', # Chinese name + said
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r'(?:据|根据|来自)\s*[\u4e00-\u9fff]+(?:报告|数据|研究|调查)', # "according to X report"
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r'20[12]\d\s*年', # Specific year reference
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r'\d+(?:\.\d+)?%', # Specific percentage
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r'(?:亿|万)\s*(?:美元|元|人民币)', # Specific monetary amount
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r'[A-Z][a-z]+\s+[A-Z][a-z]+',
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r'[\u4e00-\u9fff]{2,4}(?:表示|指出|认为|写道|提到|说过)',
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r'(?:据|根据|来自)\s*[\u4e00-\u9fff]+(?:报告|数据|研究|调查)',
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r'20[12]\d\s*年',
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r'\d+(?:\.\d+)?%',
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r'(?:亿|万)\s*(?:美元|元|人民币)',
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]
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NEGATIVE_MARKERS = [
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"失望", "糟糕", "扯", "坑", "烂", "差劲", "崩溃", "吐槽", "骂",
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"怒", "烦", "焦虑", "担忧", "不满", "恶心", "可怕", "可悲", "可笑",
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"离谱", "尴尬", "无语", "蠢", "惨", "亏", "危",
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"太扯了", "说实话我很失望", "搞什么", "不靠谱", "受不了",
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]
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COMMON_ADVERBS = [
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"非常", "十分", "极其", "特别", "相当", "尤其", "格外",
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"更加", "越来越", "逐渐", "不断", "始终", "一直",
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"已经", "正在", "将要", "可能", "大概", "或许",
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"似乎", "显然", "明显", "确实", "果然", "居然",
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"竟然", "简直", "几乎", "完全", "绝对", "必然",
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]
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COLD_WORDS = ["边际", "认知负荷", "信息不对称", "路径依赖", "商业模式", "生态系统", "增量"]
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WARM_WORDS = ["说白了", "其实吧", "讲真", "说实话", "坦白讲", "懂的都懂", "怎么说呢"]
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HOT_WORDS = ["DNA动了", "格局打开", "遥遥<EFBFBD><EFBFBD>先", "卷", "内卷", "炸了", "杀疯了", "吃灰"]
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WILD_WORDS = ["整挺好", "不靠谱", "瞎折腾", "搁这儿", "糊弄", "扯", "嗯"]
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SELF_CORRECTION_PATTERNS = [
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r'不对[,,]', r'准确说', r'算了', r'说错了',
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r'其实不是', r'我记混了', r'应该说', r'更准确地说',
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r'([^)]{4,})', # Chinese parenthetical insertion (≥4 chars)
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]
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BROKEN_SENTENCE_PATTERNS = [
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r'——(?!.*[,。!?])',
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r'\.{3,}|…',
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r'不对[,,]',
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r'算了',
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]
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def check_no_banned_words(text: str) -> tuple[bool, str]:
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"""Check: zero banned words."""
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# ============================================================
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# Helpers
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# ============================================================
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def _split_sentences(text):
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"""Split text by Chinese sentence-ending punctuation."""
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sentences = re.split(r'[。!?\n]', text)
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return [s.strip() for s in sentences if s.strip() and len(s.strip()) > 1]
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def _split_paragraphs(text):
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"""Split text into paragraphs, excluding headings."""
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return [p.strip() for p in text.split('\n\n')
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if p.strip() and not p.strip().startswith('#')]
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def _make_result(score, detail, param=None):
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"""Create a check result dict."""
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r = {"score": round(max(0.0, min(1.0, score)), 4), "detail": detail}
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if param is not None:
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r["param"] = param
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else:
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r["param"] = None
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return r
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# ============================================================
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# Tier 1: Statistical Checks (weight 50%)
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# ============================================================
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def score_sentence_length_stddev(text):
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"""[1.1] Sentence length standard deviation. → sentence_variance"""
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sentences = _split_sentences(text)
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if len(sentences) < 5:
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return _make_result(0.5, "too few sentences to measure", "sentence_variance")
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lengths = [len(s) for s in sentences]
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mean = sum(lengths) / len(lengths)
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variance = sum((l - mean) ** 2 for l in lengths) / len(lengths)
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stddev = variance ** 0.5
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score = min(1.0, stddev / 25.0)
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return _make_result(score, f"stddev={stddev:.1f} (target ≥15)", "sentence_variance")
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def score_sentence_length_range(text):
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"""[1.1] Sentence length range (max - min). → sentence_variance"""
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sentences = _split_sentences(text)
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if len(sentences) < 5:
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return _make_result(0.5, "too few sentences", "sentence_variance")
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lengths = [len(s) for s in sentences]
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rng = max(lengths) - min(lengths)
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range_score = min(1.0, rng / 40.0)
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# Check for single-sentence short paragraphs
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lines = text.split('\n')
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short_paras = sum(1 for l in lines if l.strip() and 1 <= len(l.strip()) <= 5
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and not l.strip().startswith('#'))
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expected = max(1, len(text) / 500)
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short_score = min(1.0, short_paras / expected)
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score = range_score * 0.6 + short_score * 0.4
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return _make_result(score, f"range={rng} (target ≥30), short_paras={short_paras}", "sentence_variance")
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def score_paragraph_length_variance(text):
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"""[1.3] Paragraph length variance. → paragraph_rhythm"""
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paragraphs = _split_paragraphs(text)
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if len(paragraphs) < 3:
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return _make_result(0.5, "too few paragraphs", "paragraph_rhythm")
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total_pairs = len(paragraphs) - 1
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similar = sum(1 for i in range(total_pairs)
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if abs(len(paragraphs[i]) - len(paragraphs[i + 1])) <= 20)
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score = 1.0 - (similar / total_pairs) if total_pairs > 0 else 0.5
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return _make_result(score, f"{similar}/{total_pairs} consecutive similar-length pairs", "paragraph_rhythm")
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def score_vocabulary_richness(text):
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"""[1.2] CJK bigram type-token ratio + temperature mix. → word_temperature_bias"""
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cjk_chars = re.findall(r'[\u4e00-\u9fff]', text)
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if len(cjk_chars) < 20:
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return _make_result(0.5, "too few CJK characters", "word_temperature_bias")
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bigrams = [cjk_chars[i] + cjk_chars[i + 1] for i in range(len(cjk_chars) - 1)]
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ttr = len(set(bigrams)) / len(bigrams) if bigrams else 0
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ttr_score = min(1.0, ttr / 0.7)
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# Temperature mix bonus
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found_temps = sum([
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any(w in text for w in COLD_WORDS),
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any(w in text for w in WARM_WORDS),
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any(w in text for w in HOT_WORDS),
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any(w in text for w in WILD_WORDS),
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])
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temp_bonus = found_temps / 4.0 * 0.3
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score = min(1.0, ttr_score * 0.7 + temp_bonus)
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return _make_result(score, f"bigram_ttr={ttr:.3f}, temps={found_temps}/4", "word_temperature_bias")
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def score_negative_emotion_ratio(text):
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"""[1.4] Negative emotion ratio. → emotional_arc"""
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sentences = _split_sentences(text)
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if not sentences:
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return _make_result(0.5, "no sentences", "emotional_arc")
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negative_count = sum(1 for s in sentences
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if any(m in s for m in NEGATIVE_MARKERS))
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ratio = negative_count / len(sentences)
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score = min(1.0, ratio / 0.25)
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return _make_result(score, f"negative={negative_count}/{len(sentences)} ({ratio:.0%}, target ≥20%)", "emotional_arc")
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def score_adverb_density(text):
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"""[1.5] Adverb density control. → adverb_max_per_100"""
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char_count = len(text)
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if char_count < 50:
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return _make_result(0.5, "text too short", "adverb_max_per_100")
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# Count adverb occurrences
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total_adverbs = sum(text.count(adv) for adv in COMMON_ADVERBS)
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density = total_adverbs / char_count * 100
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# Check consecutive sentences starting with adverbs
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sentences = _split_sentences(text)
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consecutive_adverb_starts = 0
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for i in range(len(sentences) - 1):
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a_starts = any(sentences[i].startswith(adv) for adv in COMMON_ADVERBS)
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b_starts = any(sentences[i + 1].startswith(adv) for adv in COMMON_ADVERBS)
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if a_starts and b_starts:
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consecutive_adverb_starts += 1
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score = 1.0
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if density > 3.0:
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score -= min(0.5, (density - 3.0) * 0.1)
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score -= consecutive_adverb_starts * 0.3
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return _make_result(score, f"density={density:.1f}/100chars, consecutive_starts={consecutive_adverb_starts}", "adverb_max_per_100")
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# ============================================================
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# Tier 2: Pattern Checks (weight 30%)
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# ============================================================
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def score_banned_words(text):
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"""[2.1] Banned word check. → null (hard rule, no config param)"""
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found = [w for w in BANNED_WORDS if w in text]
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if found:
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return False, f"Found {len(found)} banned words: {found[:5]}"
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return True, "0 banned words"
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score = max(0.0, 1.0 - len(found) * 0.2)
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detail = "0 banned words" if not found else f"{len(found)} found: {found[:5]}"
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return _make_result(score, detail, None)
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def check_real_sources(text: str) -> tuple[bool, str]:
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"""Check: article references real external sources (≥3 instances)."""
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count = 0
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for pattern in REAL_SOURCE_PATTERNS:
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count += len(re.findall(pattern, text))
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if count >= 3:
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return True, f"{count} real-source indicators found"
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return False, f"Only {count} real-source indicators (need ≥3)"
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def check_broken_sentences(text: str) -> tuple[bool, str]:
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"""Check: ≥3 broken/incomplete sentences (dashes, ellipsis, self-corrections)."""
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patterns = [
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r'——(?!.*[,。!?])', # em-dash interruption without ending punct
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r'\.{3,}|…', # ellipsis
|
||||
r'不对[,,]', # self-correction "不对,"
|
||||
r'算了', # abandonment "算了"
|
||||
r'^.{1,6}[。!?]$', # ultra-short sentence (≤6 chars + punct) as standalone line
|
||||
]
|
||||
def score_broken_sentences(text):
|
||||
"""[2.2] Broken/incomplete sentence patterns. → broken_sentence_rate"""
|
||||
count = 0
|
||||
lines = text.split('\n')
|
||||
for line in lines:
|
||||
line = line.strip()
|
||||
if not line:
|
||||
continue
|
||||
for p in patterns:
|
||||
for p in BROKEN_SENTENCE_PATTERNS:
|
||||
count += len(re.findall(p, line))
|
||||
# Check for ultra-short standalone paragraphs (1-10 chars)
|
||||
if 1 <= len(line) <= 10 and not line.startswith('#'):
|
||||
count += 1
|
||||
if count >= 3:
|
||||
return True, f"{count} broken/incomplete structures"
|
||||
return False, f"Only {count} broken structures (need ≥3)"
|
||||
char_count = len(text)
|
||||
expected = max(3, char_count / 500 * 3)
|
||||
score = min(1.0, count / expected)
|
||||
return _make_result(score, f"{count} broken structures (expected ≥{expected:.0f})", "broken_sentence_rate")
|
||||
|
||||
|
||||
def check_sentence_length_variance(text: str) -> tuple[bool, str]:
|
||||
"""Check: sentence length standard deviation > threshold.
|
||||
|
||||
AI text has suspiciously uniform sentence lengths.
|
||||
Human text varies wildly (3-char to 80-char sentences in the same paragraph).
|
||||
"""
|
||||
# Split by Chinese sentence-ending punctuation
|
||||
sentences = re.split(r'[。!?\n]', text)
|
||||
sentences = [s.strip() for s in sentences if s.strip() and len(s.strip()) > 1]
|
||||
|
||||
if len(sentences) < 5:
|
||||
return False, "Too few sentences to measure"
|
||||
|
||||
lengths = [len(s) for s in sentences]
|
||||
mean = sum(lengths) / len(lengths)
|
||||
variance = sum((l - mean) ** 2 for l in lengths) / len(lengths)
|
||||
stddev = variance ** 0.5
|
||||
|
||||
# Threshold: human text typically has stddev > 15 chars
|
||||
# AI text tends to be 8-12
|
||||
if stddev > 15:
|
||||
return True, f"Sentence length stddev = {stddev:.1f} (good variance)"
|
||||
return False, f"Sentence length stddev = {stddev:.1f} (too uniform, need >15)"
|
||||
def score_real_sources(text):
|
||||
"""[3.1] Real external source indicators. → real_data_density"""
|
||||
count = 0
|
||||
for pattern in REAL_SOURCE_PATTERNS:
|
||||
count += len(re.findall(pattern, text))
|
||||
score = min(1.0, count / 5.0)
|
||||
return _make_result(score, f"{count} real-source indicators (target ≥5)", "real_data_density")
|
||||
|
||||
|
||||
def check_paragraph_length_variance(text: str) -> tuple[bool, str]:
|
||||
"""Check: no consecutive paragraphs of similar length."""
|
||||
paragraphs = [p.strip() for p in text.split('\n\n') if p.strip() and not p.strip().startswith('#')]
|
||||
if len(paragraphs) < 3:
|
||||
return True, "Too few paragraphs to check"
|
||||
|
||||
consecutive_similar = 0
|
||||
for i in range(len(paragraphs) - 1):
|
||||
len_a = len(paragraphs[i])
|
||||
len_b = len(paragraphs[i + 1])
|
||||
if abs(len_a - len_b) <= 20:
|
||||
consecutive_similar += 1
|
||||
|
||||
if consecutive_similar <= 1:
|
||||
return True, f"{consecutive_similar} consecutive similar-length pairs (OK)"
|
||||
return False, f"{consecutive_similar} consecutive similar-length pairs (too uniform)"
|
||||
def score_word_temperature_mix(text):
|
||||
"""[1.2] Word temperature band coverage. → word_temperature_bias"""
|
||||
found_temps = sum([
|
||||
any(w in text for w in COLD_WORDS),
|
||||
any(w in text for w in WARM_WORDS),
|
||||
any(w in text for w in HOT_WORDS),
|
||||
any(w in text for w in WILD_WORDS),
|
||||
])
|
||||
score = max(0.0, (found_temps - 1) / 3.0)
|
||||
return _make_result(score, f"{found_temps}/4 temperature bands", "word_temperature_bias")
|
||||
|
||||
|
||||
def check_word_temperature_mix(text: str) -> tuple[bool, str]:
|
||||
"""Check: mix of formal/colloquial/slang/wild vocabulary."""
|
||||
cold = ["边际", "认知负荷", "信息不对称", "路径依赖", "商业模式", "生态系统", "增量"]
|
||||
warm = ["说白了", "其实吧", "讲真", "说实话", "坦白讲", "懂的都懂", "怎么说呢"]
|
||||
hot = ["DNA动了", "格局打开", "遥遥领先", "卷", "内卷", "炸了", "杀疯了", "吃灰"]
|
||||
wild = ["整挺好", "不靠谱", "瞎折腾", "搁这儿", "糊弄", "扯", "嗯"]
|
||||
|
||||
found_temps = 0
|
||||
if any(w in text for w in cold): found_temps += 1
|
||||
if any(w in text for w in warm): found_temps += 1
|
||||
if any(w in text for w in hot): found_temps += 1
|
||||
if any(w in text for w in wild): found_temps += 1
|
||||
|
||||
if found_temps >= 3:
|
||||
return True, f"{found_temps}/4 temperature types found"
|
||||
return False, f"Only {found_temps}/4 temperature types (need ≥3)"
|
||||
def score_self_correction(text):
|
||||
"""[2.2] Self-correction and parenthetical patterns. → self_correction_rate"""
|
||||
count = 0
|
||||
for pattern in SELF_CORRECTION_PATTERNS:
|
||||
count += len(re.findall(pattern, text))
|
||||
score = min(1.0, count / 3.0)
|
||||
return _make_result(score, f"{count} self-corrections/insertions (target ≥3)", "self_correction_rate")
|
||||
|
||||
|
||||
def run_layer1(text: str) -> dict:
|
||||
"""Run all Layer 1 checks. Returns dict with results."""
|
||||
checks = [
|
||||
("no_banned_words", check_no_banned_words),
|
||||
("real_sources", check_real_sources),
|
||||
("broken_sentences", check_broken_sentences),
|
||||
("sentence_length_variance", check_sentence_length_variance),
|
||||
("paragraph_length_variance", check_paragraph_length_variance),
|
||||
("word_temperature_mix", check_word_temperature_mix),
|
||||
]
|
||||
# ============================================================
|
||||
# Tier Runners
|
||||
# ============================================================
|
||||
|
||||
TIER1_CHECKS = [
|
||||
("sentence_length_stddev", score_sentence_length_stddev),
|
||||
("sentence_length_range", score_sentence_length_range),
|
||||
("paragraph_length_variance", score_paragraph_length_variance),
|
||||
("vocabulary_richness", score_vocabulary_richness),
|
||||
("negative_emotion_ratio", score_negative_emotion_ratio),
|
||||
("adverb_density", score_adverb_density),
|
||||
]
|
||||
|
||||
TIER2_CHECKS = [
|
||||
("banned_words", score_banned_words),
|
||||
("broken_sentences", score_broken_sentences),
|
||||
("real_sources", score_real_sources),
|
||||
("word_temperature_mix", score_word_temperature_mix),
|
||||
("self_correction", score_self_correction),
|
||||
]
|
||||
|
||||
|
||||
def run_tier(checks, text):
|
||||
"""Run a tier of checks. Returns dict keyed by check name + _summary."""
|
||||
results = {}
|
||||
passed = 0
|
||||
total = len(checks)
|
||||
|
||||
scores = []
|
||||
for name, fn in checks:
|
||||
ok, detail = fn(text)
|
||||
results[name] = {"passed": ok, "detail": detail}
|
||||
if ok:
|
||||
passed += 1
|
||||
|
||||
r = fn(text)
|
||||
results[name] = r
|
||||
scores.append(r["score"])
|
||||
results["_summary"] = {
|
||||
"passed": passed,
|
||||
"total": total,
|
||||
"pass_rate": round(passed / total, 4),
|
||||
"count": len(checks),
|
||||
"mean_score": round(sum(scores) / len(scores), 4) if scores else 0,
|
||||
"scores": [round(s, 4) for s in scores],
|
||||
}
|
||||
return results
|
||||
|
||||
|
||||
# ============================================================
|
||||
# Layer 2: Subjective Reader-Feel (LLM judge)
|
||||
# ============================================================
|
||||
|
||||
JUDGE_PROMPT = """你是一个经验丰富的公众号读者。你对 AI 生成的内容非常敏感——你能凭直觉分辨出人写的和 AI 写的。
|
||||
|
||||
现在请你阅读下面这篇文章,然后回答一个问题:
|
||||
|
||||
**这篇文章读起来像人写的吗?**
|
||||
|
||||
评分标准(1-10):
|
||||
- 1-3:明显是 AI 写的。语言过于规整,没有个人色彩,像教科书。
|
||||
- 4-5:有一些 AI 痕迹。整体流畅但缺乏个人经历、情感起伏或出人意料的表达。
|
||||
- 6-7:大部分像人写的,偶尔有几句感觉"太完美了"。
|
||||
- 8-9:很像人写的。有个人风格、情感波动、不完美感,像一个真人编辑的作品。
|
||||
- 10:完全像人写的。如果不告诉我,我不会怀疑这是 AI 参与的。
|
||||
|
||||
请只输出一个 JSON:{"score": 数字, "reason": "一句话理由"}
|
||||
|
||||
---
|
||||
|
||||
文章内容:
|
||||
|
||||
{article}
|
||||
"""
|
||||
|
||||
|
||||
def run_layer2_stub(text: str) -> dict:
|
||||
"""Layer 2 stub — returns placeholder when no LLM API available.
|
||||
|
||||
In production, this calls Claude/GPT to judge the article.
|
||||
For the optimization loop, replace this with actual API call.
|
||||
"""
|
||||
return {
|
||||
"score": 5.0,
|
||||
"reason": "(stub) LLM judge not configured — using default score",
|
||||
"is_stub": True,
|
||||
}
|
||||
|
||||
|
||||
# ============================================================
|
||||
# Composite Score
|
||||
# ============================================================
|
||||
|
||||
def compute_composite(layer1: dict, layer2: dict) -> float:
|
||||
"""Composite score: lower is better (like val_bpb in autoresearch).
|
||||
def compute_composite(tier1, tier2, tier3_score=None):
|
||||
"""Compute composite score (0=human, 100=AI).
|
||||
|
||||
Inverted so that 0 = perfect human, 100 = obvious AI.
|
||||
With tier3: T1=50%, T2=30%, T3=20%
|
||||
Without: T1=62.5%, T2=37.5%
|
||||
"""
|
||||
l1_pass_rate = layer1["_summary"]["pass_rate"]
|
||||
l2_score = layer2["score"] / 10.0 # normalize to 0-1
|
||||
t1_mean = tier1["_summary"]["mean_score"]
|
||||
t2_mean = tier2["_summary"]["mean_score"]
|
||||
|
||||
# Composite: higher pass_rate and higher reader score = more human
|
||||
humanness = l1_pass_rate * 0.6 + l2_score * 0.4
|
||||
if tier3_score is not None:
|
||||
humanness = t1_mean * 0.50 + t2_mean * 0.30 + tier3_score * 0.20
|
||||
weights = {"tier1": 0.50, "tier2": 0.30, "tier3": 0.20}
|
||||
else:
|
||||
humanness = t1_mean * 0.625 + t2_mean * 0.375
|
||||
weights = {"tier1": 0.625, "tier2": 0.375}
|
||||
|
||||
# Invert: 0 = perfect human, 100 = obvious AI
|
||||
return round((1 - humanness) * 100, 2)
|
||||
composite = round((1 - humanness) * 100, 2)
|
||||
return composite, weights
|
||||
|
||||
|
||||
def build_param_scores(tier1, tier2):
|
||||
"""Build flat param→score map for optimization. Averages if multiple checks map to same param."""
|
||||
param_map = {}
|
||||
for tier in [tier1, tier2]:
|
||||
for name, data in tier.items():
|
||||
if name.startswith("_"):
|
||||
continue
|
||||
param = data.get("param")
|
||||
if param is None:
|
||||
continue
|
||||
if param not in param_map:
|
||||
param_map[param] = []
|
||||
param_map[param].append(data["score"])
|
||||
return {p: round(sum(scores) / len(scores), 4) for p, scores in param_map.items()}
|
||||
|
||||
|
||||
# ============================================================
|
||||
# Main
|
||||
# Main API
|
||||
# ============================================================
|
||||
|
||||
def score_article(text: str, verbose: bool = False) -> dict:
|
||||
def score_article(text, verbose=False, tier3_score=None):
|
||||
"""Score an article. Returns full results dict."""
|
||||
# Strip markdown headers for scoring
|
||||
clean = re.sub(r'^#+\s+.*$', '', text, flags=re.MULTILINE).strip()
|
||||
|
||||
layer1 = run_layer1(clean)
|
||||
layer2 = run_layer2_stub(clean)
|
||||
composite = compute_composite(layer1, layer2)
|
||||
tier1 = run_tier(TIER1_CHECKS, clean)
|
||||
tier2 = run_tier(TIER2_CHECKS, clean)
|
||||
composite, weights = compute_composite(tier1, tier2, tier3_score)
|
||||
param_scores = build_param_scores(tier1, tier2)
|
||||
|
||||
result = {
|
||||
"composite_score": composite,
|
||||
"layer1": layer1,
|
||||
"layer2": layer2,
|
||||
"tier1": tier1,
|
||||
"tier2": tier2,
|
||||
"tier3": {
|
||||
"score": tier3_score,
|
||||
"source": "agent" if tier3_score is not None else "not_available",
|
||||
},
|
||||
"weights": weights,
|
||||
"param_scores": param_scores,
|
||||
"char_count": len(clean),
|
||||
}
|
||||
|
||||
if verbose:
|
||||
print(f"\n{'='*60}")
|
||||
print(f"HUMANNESS SCORE: {composite:.1f}/100 (lower = more human)")
|
||||
print(f"{'='*60}")
|
||||
print(f"\nLayer 1 — Objective Checklist ({layer1['_summary']['passed']}/{layer1['_summary']['total']})")
|
||||
for name, data in layer1.items():
|
||||
if name.startswith('_'):
|
||||
continue
|
||||
status = "✓" if data["passed"] else "✗"
|
||||
print(f" {status} {name}: {data['detail']}")
|
||||
print(f"\nLayer 2 — Reader Feel: {layer2['score']}/10")
|
||||
print(f" {layer2['reason']}")
|
||||
print(f"\nComposite: {composite:.1f} (0=完美人类, 100=明显AI)")
|
||||
_print_verbose(result)
|
||||
|
||||
return result
|
||||
|
||||
|
||||
def _print_verbose(result):
|
||||
"""Print a human-readable report."""
|
||||
composite = result["composite_score"]
|
||||
print(f"\n{'=' * 60}")
|
||||
print(f"HUMANNESS SCORE: {composite:.1f}/100 (lower = more human)")
|
||||
print(f"{'=' * 60}")
|
||||
|
||||
for tier_name, tier_label, weight in [
|
||||
("tier1", "Tier 1 — Statistical", result["weights"].get("tier1", 0)),
|
||||
("tier2", "Tier 2 — Pattern", result["weights"].get("tier2", 0)),
|
||||
]:
|
||||
tier = result[tier_name]
|
||||
summary = tier["_summary"]
|
||||
print(f"\n{tier_label} (weight {weight:.0%}, mean {summary['mean_score']:.2f})")
|
||||
for name, data in tier.items():
|
||||
if name.startswith("_"):
|
||||
continue
|
||||
bar = "█" * int(data["score"] * 10) + "░" * (10 - int(data["score"] * 10))
|
||||
param_tag = f" [{data['param']}]" if data.get("param") else ""
|
||||
print(f" {bar} {data['score']:.2f} {name}{param_tag}")
|
||||
print(f" {data['detail']}")
|
||||
|
||||
t3 = result["tier3"]
|
||||
if t3["score"] is not None:
|
||||
t3_weight = result["weights"].get("tier3", 0)
|
||||
print(f"\nTier 3 — LLM (weight {t3_weight:.0%})")
|
||||
print(f" Score: {t3['score']:.2f} (source: {t3['source']})")
|
||||
else:
|
||||
print(f"\nTier 3 — LLM: not available (standalone mode)")
|
||||
|
||||
print(f"\nComposite: {composite:.1f} (0=完美人类, 100=明显AI)")
|
||||
print(f"Weights: {result['weights']}")
|
||||
|
||||
param_scores = result["param_scores"]
|
||||
if param_scores:
|
||||
sorted_params = sorted(param_scores.items(), key=lambda x: x[1])
|
||||
print(f"\nLowest-scoring parameters (optimize these first):")
|
||||
for param, score in sorted_params[:3]:
|
||||
print(f" {param}: {score:.2f}")
|
||||
|
||||
|
||||
def main():
|
||||
parser = argparse.ArgumentParser(description="Score article humanness")
|
||||
parser = argparse.ArgumentParser(description="Score article humanness (0=human, 100=AI)")
|
||||
parser.add_argument("input", help="Markdown article file")
|
||||
parser.add_argument("--verbose", "-v", action="store_true", help="Detailed output")
|
||||
parser.add_argument("--verbose", "-v", action="store_true", help="Detailed report")
|
||||
parser.add_argument("--json", action="store_true", help="JSON output")
|
||||
parser.add_argument("--tier3", type=float, default=None,
|
||||
help="Tier 3 LLM score (0-1), passed by agent from SKILL.md")
|
||||
args = parser.parse_args()
|
||||
|
||||
text = Path(args.input).read_text(encoding="utf-8")
|
||||
result = score_article(text, verbose=args.verbose)
|
||||
result = score_article(text, verbose=args.verbose, tier3_score=args.tier3)
|
||||
|
||||
if args.json:
|
||||
print(json.dumps(result, ensure_ascii=False, indent=2))
|
||||
|
|
|
|||
149
dist/openclaw/scripts/optimize_loop.py
vendored
149
dist/openclaw/scripts/optimize_loop.py
vendored
|
|
@ -1,149 +0,0 @@
|
|||
#!/usr/bin/env python3
|
||||
"""
|
||||
WeWrite Optimization Loop — autoresearch-style iterative improvement.
|
||||
|
||||
Inspired by Karpathy's autoresearch: change → score → keep/rollback → repeat.
|
||||
But instead of optimizing ML training code, we optimize WRITING RULES to
|
||||
produce articles that pass AI detection while maintaining quality.
|
||||
|
||||
The mutable surface: writing-config.yaml (style parameters + prompt rules)
|
||||
The fixed evaluation: humanness_score.py (objective checklist + subjective feel)
|
||||
The metric: composite_score (lower = more human, like val_bpb)
|
||||
|
||||
Usage:
|
||||
python3 optimize_loop.py --topic "AI Agent" --iterations 10
|
||||
python3 optimize_loop.py --topic "AI Agent" --iterations 5 --verbose
|
||||
|
||||
Architecture:
|
||||
1. Load current writing-config.yaml
|
||||
2. Generate article with current config
|
||||
3. Score with humanness_score.py
|
||||
4. LLM proposes a change to writing-config.yaml
|
||||
5. Generate article with new config
|
||||
6. Score again
|
||||
7. If improved → keep (commit). If not → rollback.
|
||||
8. Log to results.tsv
|
||||
9. Repeat.
|
||||
|
||||
Requirements:
|
||||
- ANTHROPIC_API_KEY in environment (for article generation + LLM judge)
|
||||
- writing-config.yaml in skill root (created on first run with defaults)
|
||||
"""
|
||||
|
||||
import argparse
|
||||
import json
|
||||
import os
|
||||
import subprocess
|
||||
import sys
|
||||
from datetime import datetime
|
||||
from pathlib import Path
|
||||
|
||||
import yaml
|
||||
|
||||
SKILL_DIR = Path(__file__).parent.parent
|
||||
CONFIG_PATH = SKILL_DIR / "writing-config.yaml"
|
||||
RESULTS_PATH = SKILL_DIR / "optimization-results.tsv"
|
||||
|
||||
DEFAULT_CONFIG = {
|
||||
"persona": "科技媒体资深编辑,写了八年公众号,对AI行业有深度认知",
|
||||
"sentence_variance": 0.7,
|
||||
"broken_sentence_rate": 0.04,
|
||||
"idiom_density": 0.15,
|
||||
"filler_style": "mixed", # literary / casual / mixed / minimal
|
||||
"paragraph_rhythm": "chaotic", # structured / chaotic / wave
|
||||
"self_correction_rate": 0.02,
|
||||
"tangent_frequency": "every_800_chars", # never / every_500 / every_800 / every_1200
|
||||
"real_data_density": "high", # low / medium / high
|
||||
"word_temperature_bias": "warm", # cold / warm / hot / balanced
|
||||
"emotional_arc": "restrained_to_burst", # flat / gradual / restrained_to_burst / volatile
|
||||
"opening_style": "scene", # scene / data / question / anecdote / cold_open
|
||||
"closing_style": "open_question", # summary / open_question / image / abrupt
|
||||
"structure_linearity": 0.3, # 0=fully non-linear, 1=fully linear
|
||||
}
|
||||
|
||||
|
||||
def ensure_config():
|
||||
"""Create default writing-config.yaml if it doesn't exist."""
|
||||
if not CONFIG_PATH.exists():
|
||||
with open(CONFIG_PATH, "w", encoding="utf-8") as f:
|
||||
yaml.dump(DEFAULT_CONFIG, f, allow_unicode=True, default_flow_style=False)
|
||||
print(f"Created default config: {CONFIG_PATH}")
|
||||
return yaml.safe_load(CONFIG_PATH.read_text(encoding="utf-8"))
|
||||
|
||||
|
||||
def score_article(article_path: str) -> dict:
|
||||
"""Run humanness_score.py on an article. Returns parsed result."""
|
||||
result = subprocess.run(
|
||||
["python3", str(SKILL_DIR / "scripts" / "humanness_score.py"), article_path, "--json"],
|
||||
capture_output=True, text=True
|
||||
)
|
||||
if result.returncode != 0:
|
||||
print(f"Scoring failed: {result.stderr}", file=sys.stderr)
|
||||
return {"composite_score": 100.0, "error": result.stderr}
|
||||
return json.loads(result.stdout)
|
||||
|
||||
|
||||
def log_result(iteration: int, composite: float, config_summary: str, status: str, description: str):
|
||||
"""Append result to TSV log."""
|
||||
header_needed = not RESULTS_PATH.exists()
|
||||
with open(RESULTS_PATH, "a", encoding="utf-8") as f:
|
||||
if header_needed:
|
||||
f.write("iteration\ttimestamp\tcomposite\tstatus\tdescription\tconfig_change\n")
|
||||
ts = datetime.now().strftime("%Y-%m-%d %H:%M:%S")
|
||||
f.write(f"{iteration}\t{ts}\t{composite:.2f}\t{status}\t{description}\t{config_summary}\n")
|
||||
|
||||
|
||||
def print_banner(iteration: int, total: int):
|
||||
print(f"\n{'='*60}")
|
||||
print(f" OPTIMIZATION LOOP — Iteration {iteration}/{total}")
|
||||
print(f"{'='*60}")
|
||||
|
||||
|
||||
def main():
|
||||
parser = argparse.ArgumentParser(description="WeWrite optimization loop")
|
||||
parser.add_argument("--topic", required=True, help="Article topic for testing")
|
||||
parser.add_argument("--iterations", type=int, default=10, help="Number of iterations")
|
||||
parser.add_argument("--verbose", "-v", action="store_true")
|
||||
args = parser.parse_args()
|
||||
|
||||
print(f"""
|
||||
╔══════════════════════════════════════════════════════╗
|
||||
║ WeWrite Optimization Loop ║
|
||||
║ Topic: {args.topic:<44s}║
|
||||
║ Iterations: {args.iterations:<39d}║
|
||||
║ ║
|
||||
║ Pattern: change config → generate → score → ║
|
||||
║ keep if better, rollback if worse ║
|
||||
╚══════════════════════════════════════════════════════╝
|
||||
""")
|
||||
|
||||
config = ensure_config()
|
||||
|
||||
print("This script provides the FRAMEWORK for optimization.")
|
||||
print("To run the full loop, you need:")
|
||||
print(" 1. An article generation function (Claude API)")
|
||||
print(" 2. A scoring function (humanness_score.py — included)")
|
||||
print(" 3. An LLM to propose config changes (Claude API)")
|
||||
print()
|
||||
print("Current config:")
|
||||
print(yaml.dump(config, allow_unicode=True, default_flow_style=False))
|
||||
print()
|
||||
print("Run this loop via Claude Code / OpenClaw agent:")
|
||||
print()
|
||||
print(" Agent reads writing-config.yaml")
|
||||
print(" → generates article with those rules")
|
||||
print(" → scores with: python3 scripts/humanness_score.py article.md --json")
|
||||
print(" → proposes a config change")
|
||||
print(" → generates new article")
|
||||
print(" → scores again")
|
||||
print(" → if composite_score decreased → commit config change")
|
||||
print(" → if composite_score same/worse → rollback")
|
||||
print(" → logs to optimization-results.tsv")
|
||||
print(" → repeats")
|
||||
print()
|
||||
print("To test scoring on an existing article:")
|
||||
print(f" python3 scripts/humanness_score.py <article.md> --verbose")
|
||||
|
||||
|
||||
if __name__ == "__main__":
|
||||
main()
|
||||
7
dist/openclaw/writing-config.example.yaml
vendored
7
dist/openclaw/writing-config.example.yaml
vendored
|
|
@ -1,10 +1,9 @@
|
|||
# WeWrite 写作参数(可优化)
|
||||
# 复制为 writing-config.yaml,然后用 optimize loop 迭代调优
|
||||
# 或手动调整后观察朱雀检测结果
|
||||
# 复制为 writing-config.yaml,在对话中说"优化参数"让 Agent 迭代调优
|
||||
# 或手动调整后用 humanness_score.py 评估
|
||||
#
|
||||
# 这个文件是起点,不是最优解。
|
||||
# 运行: python3 scripts/optimize_loop.py --topic "你的主题" --iterations 10
|
||||
# 每次迭代会修改 writing-config.yaml 中的参数,保留得分更好的版本。
|
||||
# 在对话中说"优化参数"即可自动调优,每轮调整得分最低的参数。
|
||||
#
|
||||
# 参数分三层,对应 writing-guide.md 的反检测结构。
|
||||
|
||||
|
|
|
|||
Loading…
Reference in a new issue