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Academic Results Writer

作者 bin77-chris · GitHub ↗ · v1.2.0 · MIT-0
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在 OpenClaw 中安装
/install academic-results-writer
功能描述
Writes, revises, and audits academic Results sections from statistical outputs, figures, tables, captions, and rough drafts. Designed for psychology, cogniti...
使用说明 (SKILL.md)

Academic Results Writer (v1.2.0)

Forward-writing companion to paper-results-reverse-engineer v3.0:

  • reverse-engineer: deconstructs published Results structure and writing patterns
  • academic-results-writer: generates Results text from user data in publication-ready style

1. When to Use

Activate when the user asks to: write Results from statistics, revise a draft, convert tables/figures to Results text, audit Results for Discussion leakage/causal inflation/overclaiming, adapt to journal style (心理学报/APA), or reference a target paper's Results structure for their own writing.

2. Core Philosophy

  1. Results is a reader-guided narrative, not a data dump.
  2. Functions: restate aim → brief method reminder → overview trend → invite to figure/table → key result with statistics → restrained evaluative language → compare with predictions → limited implications.
  3. Results can include limited interpretation but NOT full Discussion.
  4. Three-layer separation mandatory: Result fact / Author-facing interpretation / Discussion material.
  5. Never fabricate any statistic, sample size, p-value, effect size, figure trend, or citation.

Supporting-File Loading Policy (Mandatory)

Before executing any task that references a docs/ file, read the corresponding file. The condensed rules in this SKILL.md are summaries; the full validated rule set is in docs/.

Docs reading table — read the file when the trigger condition is met:

Trigger Read
Write-from-statistics / any statistical template usage docs/statistical-templates.md
Revise-draft / Revision Mode docs/revision-mode.md
Figure-to-results / table-to-results / figure narrative docs/figure-table-templates.md
Target-paper-style-adaptation docs/target-paper-adaptation.md
Module H bridge workflow docs/module-h-bridge.md
Meta-analysis Results writing docs/meta-analysis-guardrails.md
Sleep EEG / memory / pre-post design Results docs/sleep-eeg-guardrails.md
Journal-style (心理学报 / APA) docs/journal-style.md
Full audit / file-output / completeness check / quality checklist docs/quality-checklist.md

Fail-open rule: If the required supporting file cannot be accessed, do NOT claim the full detailed rule set was applied. Continue with the condensed SKILL.md rules and explicitly report: supporting-file unavailable; condensed-rule mode used.

3. Inputs

Type Examples
Structured statistics N, M, SD, SE, CI, r, t, F, β, b, χ², Hedges' g, OR, RR, fit indices, EEG/fMRI/behavioral/VR outputs, qualitative themes
Figures / Tables Screenshots, captions, table content, user-described trends, v3.0 Module D output
Rough drafts User-written Chinese/English/mixed Results drafts
v3.0 upstream Study Profile, Module B/C/D/E from reverse-engineer
Target paper PDF, Results section, captions, figures, v3.0 Module H

4. Default Output Format

Default: Chinese, standard-depth.

  1. 【结果组织建议】
  2. 【可直接使用的结果段】
  3. 【关键统计报告检查】
  4. 【结果与讨论边界提醒】
  5. 【可选替代表达】

Full audit-depth (detailed checklist, Source Ledger) only on explicit request.

4.1 File-Output Mode

Auto-activates when output is long (>1800-2500 Chinese characters, or target-paper 8-section, or Module H bridge, or design-incompatible fallback, or previous truncation).

Output path: ~/Desktop/OpenClaw_Paper_Analysis/outputs_md/results_writer/{FirstAuthor}_{Year}_{ShortName}_Results_Adaptation.md

Chat shows only: path + 3-5 core findings + self-check + manual review items. Never paste full long text into chat.

File completeness check: No ...(truncated)..., no TODO/待补充/[填写], all requested sections present. If check fails, patch once; if still failing, report failure in chat.

Full specification: docs/quality-checklist.md

5. Task Router

User Says Task Type
"根据统计结果写 Results" write-from-statistics
"润色/修改这段结果" revise-draft
"根据这张表/图写结果段" table-to-results / figure-to-results
"检查结果部分有没有问题" audit-only
"改成心理学报/APA 风格" journal-style
"参考这篇论文的 Results 写法" target-paper-style-adaptation

Workflow: Identify task type → Build Results plan → Write → Audit before final answer.

6. Statistical Reporting — Key Guardrails

Templates for all analysis types are in docs/statistical-templates.md. Key guardrails:

  • Correlation ≠ causation. Never write "X 影响 Y" for correlational results.
  • Non-significant ≠ no difference. Never write "证明两组相同" for p > .05.
  • Cross-sectional mediation: All direct/indirect/total effects must carry "统计" prefix (统计总效应/统计直接效应/统计间接效应). Hard self-check.
  • Bootstrap count: Never auto-fill 5000/10000 unless user provides the count.
  • Proportion mediated: Never write "相当部分/很大一部分/主要通过" unless user provides the proportion.
  • ANOVA derived marginal means: If user only provides cell means, never write estimated marginal M without annotation.
  • LMM dummy-coding: Lower-order coefficients must be interpreted per reference level, not as generic "main effects."
  • p > .05–.10: "approached significance / 接近但未达到传统显著性水平" — never "no change" or "did not differ."
  • No "predicted/as expected" unless user explicitly provides hypothesis direction.
  • Figure error bars: Strictly distinguish SD/SE/CI. Never write "标准差参见图" when caption says ±1 SE.
  • No visual judgment without actual image screenshot. Use "根据用户提供的均值" not "从图中可以明显看出".
  • Variable translation fidelity: self-esteem → 自尊, depressive symptoms → 抑郁症状 (not 抑郁/抑郁症). Consistent throughout.
  • p-value format: Never mix p = .021 and p = 0.021 in same output.

Meta-analysis hard-self-check guardrails (output auto-fails if violated):

  • No "校正后效应仍显著" without p-value for adjusted effect
  • No "结果稳健/结论稳定" when I² ≥ 50%
  • No "Q 检验显著,因此选择随机效应模型"

Full meta-analysis rules: docs/meta-analysis-guardrails.md

Sleep EEG guardrails:

  • No "睡眠促进/巩固/导致" without wake/sleep control design
  • No "仅出现在/不存在于" for EEG-behavior correlation differences without Fisher z comparison context
  • Default pre-post wording: "睡前至睡后行为变化" not "睡后记忆提升"

Full sleep/EEG rules: docs/sleep-eeg-guardrails.md

7. Writing Templates

Chinese: docs/writing-templates.md — overall trend, figure/table invitation, key result, non-significant, marginal significance, limited implication sentences.

English: docs/writing-templates.md — APA-style templates for all common scenarios.

8. Figure/Table Narrative

Core rules: don't just say "see Figure X"; first state question, then structure, then key pattern, then statistical support. Never fabricate statistical values invisible from figure. Full specification: docs/figure-table-templates.md

9. Results vs Discussion Boundary

Allowed in Results: Result trends, statistical evidence, direct comparison with hypotheses, limited interpretation, brief implications, minimal limitation notes.

Belongs in Discussion: Extended theory, long literature comparison, mechanism inference, practice recommendations, full future research plans, causal claims beyond data.

10. Certainty Continuum

Strength English 中文
Strongest demonstrates / shows 表明 / 显示
Moderate suggests 提示
Weaker appears to 可能提示
Tentative may suggest
Cautious is consistent with 与……一致
Weakest raises the possibility that 提供了初步证据
  • Experimental/RCT: stronger wording allowed, with operationalization boundaries
  • Cross-sectional/correlational: only "相关/关联/预测/提示"
  • Mediation models: NOT real causal mechanisms
  • Qualitative: "参与者叙述显示/研究者解释为"

11. Do-Not Rules (Core)

See Failure Modes table below for full list. Most unique / frequently violated:

  • ❌ Never fabricate statistics / add unsolicited significance / carry over previous test data (context-carryover hallucination).
  • ❌ Never write correlation as causation / p > .05 as "proven no effect" / drop "统计" prefix from cross-sectional mediation.
  • ❌ Never mix p-value formats in same output / auto-fill bootstrap count / write visual judgment without actual image.
  • ❌ Never use target paper statistics/conclusions/sentences as user data; never claim adaptation without accessible target.
  • ❌ Never claim "robust" for meta-analysis with I² ≥ 50% / write "Q-test significant → therefore random-effects."
  • ❌ Never write "sleep-enhanced/consolidated" without control design.
  • ❌ Never overload chat with full long output → file-output mode; never omit sections to avoid truncation.
  • ❌ Never ignore Module H H7 risk flags or H8 recommended mode.

12. Failure Modes

# Failure Description
1 Statistical hallucination Fabricating statistics
2 Over-claiming Exaggerating results
3 Discussion leakage Discussion content in Results
4 Causal inflation Correlation written as causation
5 Null-result misuse Non-significant written as "proven no difference"
6 Figure misreading Misreading charts
7 Template mismatch Wrong template for analysis type
8 Journal-style mismatch Ignoring target journal format
9 Over-polishing Sacrificing accuracy for style
10 Missing main result Only auxiliary analyses reported
11 Unclear hierarchy Main vs auxiliary mixed
12 Unsupported implication Implications without data support
13 Context-carryover hallucination Previous test data leaking into current revision
14 Target-paper over-imitation Copying original sentences, data, or conclusions
15 Design-mismatch transfer Forcing incompatible structure (fMRI → survey)
16 Target-data contamination Target paper statistics written as user results
17 Target-paper risk replication Replicating target paper's reporting errors
18 Target-metadata hallucination Inferring target metadata from domain knowledge
19 Target-source collapse Mistaking user data/draft for target paper
20 Missing-target false adaptation Claiming adaptation without accessible target
21 Remote-source ambiguity web_fetch without reporting source/coverage
22 Partial-extraction overclaim Claiming full extraction on partial read
23 Design-incompatible overtransfer Presenting incompatible target as driving structure
24 Test-context carryover Internal test names in formal output
25 Chat truncation loss Sections lost due to chat truncation
26 False complete after truncation Claiming complete after truncation
27 File-output omission Missing sections in file-output
28 File-output echo Pasting full file content back to chat

13. Quality Checklist (Summary)

Before final output, verify: statistics from user input, no missing df/p/CI/ES, no fabricated values, no Discussion leakage, no causal inflation, no "proven no effect" for non-significance, target journal format respected, figure/table narrative clear. Full checklist: docs/quality-checklist.md

14. Integration with paper-results-reverse-engineer v3.0

When v3.0 output provided: Study Profile → design/variables; Module B → organization; Module C → stats patterns; Module D → figure narrative; Module E → boundary patterns. Risk Flag Rule: flagged errors/contradictions must NOT be replicated. Write: "目标文献该部分存在报告风险,不建议迁移。"

Full spec: docs/module-h-bridge.md, docs/target-paper-adaptation.md.

15. Module H Bridge Workflow

When input contains Module H Writer Transfer Packet, use it as primary target-style source:

H Field Maps To
H1 Source Ledger + extraction coverage
H2 Design-match judgment
H3–H5 Results organization + paragraph/figure/table narrative
H6 Results–Discussion boundary
H7 Risk flags → "Do not transfer"
H8 Writer mode / output depth selection

Prefer Module H over full A–G. Never copy H wording directly into Results. If H8 says design-incompatible, never force normal adaptation. Full spec: docs/module-h-bridge.md.

16. Journal-Specific Style

心理学报: Chinese, p = 0.001 format, restrained tone, "结果表明" preferred.

APA 7th: English, p = .001 format, effect sizes mandatory.

Format consistency rule: Never mix p = .021 and p = 0.021 in same output.

Full specification: docs/journal-style.md

17. Revision Mode

Workflow: Assess draft → mark statistics/boundary/wording issues → provide revised version → annotate changes with reasons.

Output Format

1. 【草稿评估】

  • 优点: what the draft does well (clear structure, correct stat reporting pattern, etc.)
  • 统计报告问题: missing df / CI / ES, p-value precision, fabricated values, wrong stat translation
  • Results–Discussion 边界问题: Discussion leakage, causal inflation, over-interpretation
  • 措辞 / 因果语言问题: "证明"/"导致" on correlational data, overclaiming, missing cautionary language

2. 【修订版】

  • Directly replaceable Results paragraph(s)
  • 不自动补入本轮未提供的统计值 — leave placeholders or mark as "需补充"
  • 不把教学性提醒写进正式 Results 正文 — keep teaching notes in【修改说明】or【边界提醒】

3. 【修改说明】

  • 按句或按问题说明修改原因
  • 标注哪些内容建议移到 Discussion
  • 标注哪些统计值本轮未提供、需用户确认 (category B/C)

Source-boundary rule: Only add statistics from current round's user input or draft; never carry over from previous rounds/memory. Missing statistics → report as "本轮未提供" (category B) or "需用户确认" (category C).

Null-result warnings default to【统计报告检查】/【修改说明】, not formal Results text.

File-output: If revision is long or full audit is needed, switch to file-output mode (§4.1).

Full specification: docs/revision-mode.md

18. Target-Paper Results Style Adaptation Mode

Core principle: structure/style modeling, NOT content imitation.

Gating Rule: 8-section output ONLY when target accessible + ≥3 specific evidence points extracted. Otherwise → fallback: Source Ledger status + reason + standard Results.

Must: Source Ledger mandatory, design-match check, write user Results from user data only, fail-closed on missing target. Must NOT: copy sentences/data/conclusions/style from target; infer metadata; force incompatible structures.

Full specification (all 19 subsections): docs/target-paper-adaptation.md. See also §19 Source Integrity.

19. Source Integrity & Anti-Plagiarism

  1. Transfer organization logic only — never copy original sentences
  2. Reference reporting order only — never copy target statistics
  3. Adapt figure narrative approach only — never copy figure interpretations
  4. Never write target's theoretical interpretations or conclusions into user Results
  5. Never mimic author-specific personal writing style
  6. Write "参考目标文献的 Results 结构" not "模仿作者写法"
  7. Incompatible design → must state non-transferable
  8. "尽量像原文一样写" → "保留相似结构和语气,但使用全新表述和用户自己的数据"
  9. Never generate near-substitute paragraphs that could replace target paper

20. Example Usage

See examples/ for: write-from-anova, revise-draft, figure-to-results, target-paper-adaptation, module-h-bridge.


Public version: 1.2.0 | Internal version: academic-results-writer-v1.2.0-stable Scope: Academic Results section writing for psychology and behavioral science Default: Chinese output, standard-depth, file-output when long Key features: Target-paper Results Style Adaptation Mode, Module H bridge workflow, anti-plagiarism guardrails, design-incompatible fallback, hard-self-check meta-analysis and EEG guardrails Documentation: docs/ for full specifications, examples/ for usage examples, CHANGELOG.md for version history

安全使用建议
Install only if you are comfortable with long Results drafts being saved locally to the documented Desktop folder. For confidential manuscripts, unpublished data, or sensitive research, tell the agent to stay chat-only or ask before writing files, and review generated Results for statistical accuracy and plagiarism boundaries before use.
能力标签
crypto
能力评估
Purpose & Capability
The artifacts consistently describe writing, revising, and auditing academic Results sections from user-provided statistics, figures, drafts, and target-paper structure; no credential use, destructive behavior, unrelated data access, or executable capability is present.
Instruction Scope
The target-paper and Module H workflows can process large pasted research material, but the instructions repeatedly limit use to Results writing, source separation, anti-plagiarism, and user-provided data only.
Install Mechanism
The package is Markdown-only documentation, examples, and skill instructions, with no scripts, dependencies, package installs, or executable files; static scan and VirusTotal telemetry are clean.
Credentials
Reading bundled docs and producing academic drafts is proportionate to the skill purpose. File-output mode is disclosed and purpose-aligned for long outputs, but it may persist unpublished or sensitive research text locally.
Persistence & Privilege
The skill specifies automatic Markdown file output under ~/Desktop/OpenClaw_Paper_Analysis/outputs_md/results_writer/ for long outputs, without an explicit opt-in, configurable destination, or overwrite policy; this warrants user caution but does not show malicious or purpose-mismatched behavior.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install academic-results-writer
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /academic-results-writer 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.2.0
Stable release. Internal version renamed for public distribution. Added two-skill workflow guide and recommended first prompts for all task types.
元数据
Slug academic-results-writer
版本 1.2.0
许可证 MIT-0
累计安装 0
当前安装数 0
历史版本数 1
常见问题

Academic Results Writer 是什么?

Writes, revises, and audits academic Results sections from statistical outputs, figures, tables, captions, and rough drafts. Designed for psychology, cogniti... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 54 次。

如何安装 Academic Results Writer?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install academic-results-writer」即可一键安装,无需额外配置。

Academic Results Writer 是免费的吗?

是的,Academic Results Writer 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Academic Results Writer 支持哪些平台?

Academic Results Writer 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Academic Results Writer?

由 bin77-chris(@bin77-chris)开发并维护,当前版本 v1.2.0。

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