skills/42-wanshuiyin-ARIS/skills/skills-codex-claude-review/paper-plan/SKILL.md
Generate a structured paper outline from review conclusions and experiment results. Use when user says "写大纲", "paper outline", "plan the paper", "论文规划", or wants to create a paper plan before writing.
npx skillsauth add brycewang-stanford/Awesome-Agent-Skills-for-Empirical-Research paper-planInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Override for Codex users who want Claude Code, not a second Codex agent, to act as the reviewer. Install this package after
skills/skills-codex/*.
Generate a structured, section-by-section paper outline from: $ARGUMENTS
claude-review — Claude reviewer invoked through the local claude-review MCP bridge. Set CLAUDE_REVIEW_MODEL if you need a specific Claude model override.ICLR — Default venue. User can override (e.g., /paper-plan "topic" — venue: NeurIPS). Supported: ICLR, NeurIPS, ICML.The skill expects one or more of these in the project directory:
figures/, screen logs, tablesIf none exist, ask the user to describe the paper's contribution in 3-5 sentences.
Read all available narrative documents and extract:
Build a Claims-Evidence Matrix:
| Claim | Evidence | Status | Section |
|-------|----------|--------|---------|
| [claim 1] | [exp A, metric B] | Supported | §3.2 |
| [claim 2] | [exp C] | Partially supported | §4.1 |
Based on TARGET_VENUE and paper content, classify and select structure.
IMPORTANT: The section count is FLEXIBLE (5-8 sections). Choose what fits the content best. The templates below are starting points, not rigid constraints.
Empirical/Diagnostic paper:
1. Introduction (1.5 pages)
2. Related Work (1 page)
3. Method / Setup (1.5 pages)
4. Experiments (3 pages)
5. Analysis / Discussion (1 page)
6. Conclusion (0.5 pages)
Theory + Experiments paper:
1. Introduction (1.5 pages)
2. Related Work (1 page)
3. Preliminaries & Modeling (1.5 pages)
4. Experiments (1.5 pages)
5. Theory Part A (1.5 pages)
6. Theory Part B (1.5 pages)
7. Conclusion (0.5 pages)
— Total: 9 pages
Theory papers often need 7 sections (splitting theory into estimation + optimization, or setup + analysis). The total page budget MUST sum to MAX_PAGES.
Theory papers should:
Method paper:
1. Introduction (1.5 pages)
2. Related Work (1 page)
3. Method (2 pages)
4. Experiments (2.5 pages)
5. Ablation / Analysis (1 page)
6. Conclusion (0.5 pages)
For each section, specify:
### §0 Abstract
- **One-sentence problem**: [what gap this paper addresses]
- **Approach**: [what we do, in one sentence]
- **Key result**: [most compelling quantitative finding]
- **Implication**: [why it matters]
- **Estimated length**: 150-250 words
- **Self-contained check**: can a reader understand this without the paper?
### §1 Introduction
- **Opening hook**: [1-2 sentences that motivate the problem]
- **Gap**: [what's missing in prior work]
- **Key questions**: [the research questions this paper answers]
- **Contributions**: [numbered list, matching Claims-Evidence Matrix]
- **Hero figure**: [describe what Figure 1 should show — MUST include clear comparison if applicable]
- **Estimated length**: 1.5 pages
- **Key citations**: [3-5 papers to cite here]
### §2 Related Work
- **Subtopics**: [2-4 categories of related work]
- **Positioning**: [how this paper differs from each category]
- **Minimum length**: 1 full page (at least 3-4 paragraphs with substantive synthesis)
- **Must NOT be just a list** — synthesize, compare, and position
### §3 Method / Setup / Preliminaries
- **Notation**: [key symbols and their meanings]
- **Problem formulation**: [formal setup]
- **Method description**: [algorithm, model, or experimental design]
- **Formal statements**: [theorems, propositions if applicable]
- **Proof sketch locations**: [which key steps appear here vs. appendix]
- **Estimated length**: 1.5-2 pages
### §4 Experiments / Main Results
- **Figures planned**:
- Fig 1: [description, type: bar/line/table/architecture, WHAT COMPARISON it shows]
- Fig 2: [description]
- Table 1: [what it shows, which methods/baselines compared]
- **Data source**: [which JSON files / experiment results]
### §5 Conclusion
- **Restatement**: [contributions rephrased, not copy-pasted from intro]
- **Limitations**: [honest assessment — reviewers value this]
- **Future work**: [1-2 concrete directions]
- **Estimated length**: 0.5 pages
List every figure and table:
## Figure Plan
| ID | Type | Description | Data Source | Priority |
|----|------|-------------|-------------|----------|
| Fig 1 | Hero/Architecture | System overview + comparison | manual | HIGH |
| Fig 2 | Line plot | Training curves comparison | figures/exp_A.json | HIGH |
| Fig 3 | Bar chart | Ablation results | figures/ablation.json | MEDIUM |
| Table 1 | Comparison table | Main results vs. baselines | figures/main_results.json | HIGH |
| Table 2 | Theory comparison | Prior bounds vs. ours | manual | HIGH (theory papers) |
CRITICAL for Figure 1 / Hero Figure: Describe in detail what the figure should contain, including:
For each section, list required citations:
## Citation Plan
- §1 Intro: [paper1], [paper2], [paper3] (problem motivation)
- §2 Related: [paper4]-[paper10] (categorized by subtopic)
- §3 Method: [paper11] (baseline), [paper12] (technique we build on)
Citation rules (from claude-scholar + Imbad0202/academic-research-skills):
[VERIFY]Send the complete outline to Claude review for feedback:
mcp__claude-review__review_start:
prompt: |
Review this paper outline for a [VENUE] submission.
[full outline including Claims-Evidence Matrix]
Score 1-10 on:
1. Logical flow — does the story build naturally?
2. Claim-evidence alignment — every claim backed?
3. Missing experiments or analysis
4. Positioning relative to prior work
5. Page budget feasibility (MAX_PAGES = main body to Conclusion end, excluding refs/appendix)
For each weakness, suggest the MINIMUM fix.
Be specific and actionable — "add X" not "consider more experiments".
After this start call, immediately save the returned jobId and poll mcp__claude-review__review_status with a bounded waitSeconds until done=true. Treat the completed status payload's response as the reviewer output, and save the completed threadId for any follow-up round.
Apply feedback before finalizing.
Save the final outline to PAPER_PLAN.md in the project root:
# Paper Plan
**Title**: [working title]
**Venue**: [target venue]
**Type**: [empirical/theory/method]
**Date**: [today]
**Page budget**: [MAX_PAGES] pages (main body to Conclusion end, excluding references & appendix)
**Section count**: [N] (must match the number of section files that will be created)
## Claims-Evidence Matrix
[from Step 1]
## Structure
[from Step 2-3, section by section]
## Figure Plan
[from Step 4, with detailed hero figure description]
## Citation Plan
[from Step 5]
## Reviewer Feedback
[from Step 6, summarized]
## Next Steps
- [ ] /paper-figure to generate all figures
- [ ] /paper-write to draft LaTeX
- [ ] /paper-compile to build PDF
Large file handling: If the Write tool fails due to file size, immediately retry using Bash (cat << 'EOF' > file) to write in chunks. Do NOT ask the user for permission — just do it silently.
Do NOT generate author information — leave author block as placeholder or anonymous
Be honest about evidence gaps — mark claims as "needs experiment" rather than overclaiming
Page budget is hard — if content exceeds MAX_PAGES, suggest what to move to appendix
MAX_PAGES counts main body only — from first page to end of Conclusion. References and appendix are NOT counted.
Venue-specific norms — all three venues (ICLR/NeurIPS/ICML) use natbib (\citep/\citet)
Claims-Evidence Matrix is the backbone — every claim must map to evidence, every experiment must support a claim
Figures need detailed descriptions — especially the hero figure, which must clearly specify comparisons and visual expectations
Section count is flexible — 5-8 sections depending on paper type. Don't force content into a rigid 5-section template.
Outline methodology inspired by Research-Paper-Writing-Skills (claim-evidence mapping), claude-scholar (citation verification), and Imbad0202/academic-research-skills (claim verification protocol).
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