Academic Paper Strategist
Overview
This skill provides a systematic framework for strategic planning of academic papers in philosophy and interdisciplinary research. It guides you through three phases—from platform selection to optimized outline—with AI-driven literature search, research gap identification, originality assessment, and quality-controlled outline design.
Output: A detailed, review-ready paper outline with supporting documentation (platform style guide, literature review, gap analysis, reviewer assessment).
Companion Skill: Use academic-paper-composer to execute the outline and write the full paper.
When to Use This Skill
Use academic-paper-strategist when you need to:
Planning Stage:
- Design a research paper from initial idea to structured outline
- Identify a suitable publication platform (PhilArchive, arXiv, etc.)
- Understand writing standards for a specific preprint platform
Research Stage:
- Conduct systematic literature search
- Identify research gaps with evidence
- Assess originality of your research idea
- Predict potential impact
Design Stage:
- Structure paper chapters and arguments
- Optimize outline from reviewer perspective
- Prepare submission-ready strategy
Triggers:
- "Plan a paper on [topic]"
- "Help me design a paper about [subject]"
- "Identify research gaps in [field]"
- "Is this idea original?"
- "What platform should I submit to?"
Workflow Overview
Phase 1: PLATFORM ANALYSIS (Target Selection + Style Learning)
↓
Phase 2: THEORETICAL FRAMEWORK (AI-Driven Gap Identification)
↓
Phase 3: OUTLINE OPTIMIZATION (Quality-Controlled Design)
↓
Output: Detailed Outline + Supporting Documentation
Quality Gates: 3 validation checkpoints ensure each phase meets standards before proceeding.
Phase 1: Platform Analysis
Goal
Identify the optimal submission platform and understand its writing standards through systematic sample paper analysis.
Input Required from User
- Core research idea or topic (brief description)
- Target platform (optional - if unclear, I'll recommend)
- Field/discipline (philosophy, cognitive science, interdisciplinary, etc.)
Workflow
Step 1.1: Platform Selection (If Needed)
If target platform unclear, I will:
-
List candidate platforms based on research content:
- PhilArchive/PhilPapers: Philosophy papers, phenomenology, metaphysics
- arXiv (cs.AI, q-bio.NC): Computational, neuroscience, AI-related
- PhilSci-Archive: Philosophy of science, formal methods
- PsyArXiv: Psychology, cognitive science
- SocArXiv: Social sciences, interdisciplinary
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Evaluate each platform:
- Subject area alignment (does your topic fit?)
- Methodology match (philosophical/empirical/computational)
- Acceptance criteria
- Typical review timeline
-
Provide recommendation with reasoning
-
Decision Point 1: You confirm platform or suggest alternative
Step 1.2: Sample Paper Search (AI-Driven, Quality-Controlled)
I will conduct multi-dimensional search for 8-10 representative papers:
Search Strategy (load references/search_strategy.md for details):
Time Dimension:
- Recent (last 6 months): 3 papers - capture current trends
- Current (1-2 years): 3 papers - established standards
- Classic (highly cited): 2 papers - quality benchmarks
Relevance Dimension:
- Use keyword combinations from your topic
- Score each paper 0-10 for relevance
- Retain only papers scoring ≥7/10
Diversity Dimension:
- Multiple authors (≥5 unique)
- Different research perspectives
- Varied paper lengths
Tools Used:
- Exa MCP (semantic search)
- Tavily MCP (web search)
- Platform-specific search (PhilPapers, arXiv)
Quality Validation:
After search, I'll run scripts/evaluate_samples.py to generate evaluation report:
python scripts/evaluate_samples.py
This produces:
- Sample quality metrics
- Time distribution check
- Relevance statistics
- Diversity assessment
- Pass/Fail recommendation
Quality Gate 1 (Must Pass):
- ✓ Sample papers ≥8
- ✓ Time distribution balanced
- ✓ Average relevance ≥8/10
- ✓ Unique authors ≥5
If Failed: Re-search with adjusted criteria
Step 1.3: Writing Standards Extraction
From the 8-10 sample papers, I will extract:
Structural Patterns:
- Abstract structure (Problem→Method→Results→Contribution?)
- Chapter organization (how many sections? typical flow?)
- Average proportions (Intro 15%, Main 70%, Conclusion 15%?)
Style Patterns:
- First-person vs passive voice usage
- How arguments are structured
- Citation density and format
- Use of technical terminology
Format Specifications:
- Typical word count range
- Reference count range
- Section heading conventions
Output: [Platform]_Writing_Standards_Guide.md
Phase 2: Theoretical Framework
Goal
AI-driven systematic literature search, research gap identification, and originality assessment.
Input Required from User
- Core research question/thesis (your main argument)
- Background context (why you're interested in this)
- Optional: Any papers you already know about
Workflow
Step 2.1: Literature Search (AI-Driven, Fully Automated)
Important: This phase is AI-driven. You provide your idea; I conduct comprehensive literature search and gap analysis.
Multi-Round Search Strategy:
Round 1: Direct Search (Primary Literature)
- Extract core concepts from your idea (3-5 concepts)
- Generate keyword combinations (10-15 combinations)
- Concept + concept
- Concept + method
- Include synonyms and disciplinary variants
- Search each combination using Exa/Tavily
- Collect 30-50 candidate papers
- Quality filter: Retain top 20 papers (relevance ≥7/10)
Round 2: Expanded Search (Adjacent Fields)
- Extract new keywords from Round 1 papers
- Search adjacent disciplines:
- Philosophy → cognitive science
- Neuroscience → philosophy of mind
- AI → consciousness studies
- Collect 10-20 bridging papers
Round 3: Classic Literature (Foundational Works)
- Identify highly-cited papers (>100 citations)
- Track citations from Round 1-2 papers
- Collect 5-10 foundational papers
Total Literature Base: 35-50 papers
Load Reference: references/search_strategy.md for detailed methodology
Step 2.2: Research Gap Identification (AI Analysis)
Using collected literature, I will automatically identify 3-5 research gaps:
Gap Identification Methods:
-
Concept Mapping:
- Plot papers on Concept × Method matrix
- Identify white spaces (unexplored combinations)
-
Problem-Solution Analysis:
- What problems does literature address?
- What limitations do authors acknowledge?
- What questions remain unanswered?
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Temporal Analysis:
- What was once studied but abandoned?
- What emerged recently but unexplored?
Gap Types:
- Complete gaps: No existing research
- Partial gaps: Preliminary work only, needs development
- Controversy gaps: Competing theories, no resolution
For Each Gap, I Document:
- Clear definition (50-100 words)
- Evidence (3-5 citations showing gap exists)
- Significance assessment (High/Medium/Low)
- Feasibility assessment (Can you address it?)
Validation: Run scripts/gap_analysis.py to ensure quality:
python scripts/gap_analysis.py
This validates:
- Each gap has ≥3 pieces of evidence
- Definitions are specific and clear
- Significance is justified
Quality Gate 2 (Must Pass):
- ✓ Literature base ≥20 papers
- ✓ Identified gaps ≥3
- ✓ Each gap has ≥3 evidence citations
- ✓ At least 1 high-significance gap
If Failed: Continue search or pivot research direction
Output: Literature_Review_Report.md + Research_Gap_Analysis.md
Step 2.3: Originality Assessment (AI Analysis)
I will automatically assess your idea's originality:
Step 1: Similarity Analysis
- Compare your idea with top 15 most similar papers
- Create similarity matrix (topic/method/conclusion overlap)
- Calculate overall similarity percentage
Interpretation:
-
80%: High similarity, needs repositioning
- 50-80%: Moderate, emphasize differences
- <50%: Good originality, proceed
Step 2: Innovation Classification
Identify which innovation types apply (need ≥2):
- Methodological: New approach to known problem
- Theoretical: New framework or model
- Application: Existing theory to new domain
- Integrative: Synthesizing separate literatures
Step 3: Impact Prediction (1-10 scale)
Scoring Criteria:
- Gap Importance (5 points): Core vs. peripheral problem?
- Generalizability (3 points): Widely applicable?
- Explanatory Power (2 points): Resolves existing puzzles?
Target: ≥7/10 for good impact potential
Output: Originality_Assessment_Report.md (similarity analysis + innovation types + impact prediction + 300-word justification)
Step 2.4: Core Concepts Discussion (Interactive)
Decision Point 2: Based on literature analysis, I will:
- Propose 3-5 core concepts to emphasize
- Explain rationale (based on gap analysis + literature frequency)
- Ask for your feedback: Agree? Adjust? Add?
This ensures the paper focuses on the right concepts to maximize contribution.
Phase 3: Outline Optimization
Goal
Design a structured, review-ready outline optimized from a reviewer's perspective.
Input
- Literature analysis from Phase 2
- Core concepts (confirmed in Step 2.4)
- Platform standards from Phase 1
Workflow
Step 3.1: Initial Structure Design
Based on platform standards, I will:
-
Design chapter structure:
- Abstract
- Introduction (with subsections)
- Main body (3-5 chapters, each with subsections)
- Conclusion
-
Allocate word counts:
- Introduction: 15-20% of total
- Main body: 60-70% of total
- Conclusion: 10-15% of total
-
Determine argument flow:
- Logical progression of ideas
- Where to introduce concepts
- Where to address objections
Output: Initial_Outline_Draft.md
Step 3.2: Reviewer-Perspective Self-Assessment
I will evaluate the outline as if I were a platform reviewer, using 7 dimensions (load references/quality_standards.md for criteria):
7-Dimension Assessment (5 points each, 35 total):
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Argument Clarity (1-5)
- Is the thesis clear?
- Are supporting arguments identifiable?
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Argument Completeness (1-5)
- Any logical gaps or jumps?
- All premises justified?
-
Literature Support (1-5)
- Expected citation count (40+ for philosophy)
- Key works covered?
-
Methodological Clarity (1-5)
- Approach explicit (philosophical argument/phenomenological/etc.)?
- Method justified?
-
Originality Expression (1-5)
- Contribution clear?
- Differentiated from existing work?
-
Organization (1-5)
- Logical flow?
- Proportions balanced?
-
Platform Fit (1-5)
- Matches platform style?
- Meets format requirements?
Scoring:
- Total: X/35
- Passing threshold: ≥28/35 (80%)
Requirement: Must identify at least 3-5 specific issues with concrete improvement suggestions.
Output: Reviewer_Assessment_Report.md
Step 3.3: Optimization Recommendations (Data-Driven)
For each dimension scoring <4/5, I will provide:
Issue Description:
- What specific problem exists?
Severity (High/Medium/Low):
- High: Affects paper acceptability
- Medium: Affects paper quality
- Low: Minor improvement
Concrete Solution:
- Specific actionable fix
- Example of how to implement
Expected Improvement:
- How much will this raise the score?
Prioritization:
- All high-severity issues first
- Then medium-severity
- Then low-severity (optional)
Decision Point 3: I present recommendations; you decide:
- Accept (implement all)
- Selective (choose which to implement)
- Modify (adjust recommendations)
Step 3.4: Final Outline Generation
After implementing approved optimizations, I produce:
Detailed Outline Structure:
# [Paper Title]
## Abstract (250 words)
- [Key points to cover]
## 1. Introduction (1,500 words)
### 1.1 The Puzzle (400 words)
- [Specific content guidance]
### 1.2 Existing Approaches (600 words)
- [Specific theories to discuss]
### 1.3 This Paper's Contribution (500 words)
- [Specific claims to make]
## 2. [Main Chapter] (1,200 words)
### 2.1 [Section] (400 words)
- [Argument structure]
- [Key citations]
...
[Complete structure to 3rd-level headings]
## References
- [Expected 40-60 sources]
Quality Gate 3 (Must Pass):
- ✓ Reviewer score ≥28/35 (80%)
- ✓ All high-severity issues resolved
- ✓ Word allocations sum to target total
- ✓ Platform conformity ≥70%
If Failed: Redesign outline addressing identified issues
Final Output: Optimized_Detailed_Outline.md
Complete Output Package
Upon completion of all 3 phases, you receive:
Documentation
-
[Platform]_Writing_Standards_Guide.md
- Platform style patterns
- Structural templates
- Citation and format conventions
-
Sample_Papers_Evaluation_Report.md
- 8-10 analyzed papers
- Quality metrics
- Extracted patterns
-
Literature_Review_Report.md
- 35-50 core papers
- Organized by theme
- Annotated with relevance
-
Research_Gap_Analysis.md
- 3-5 identified gaps
- Evidence packages
- Significance assessments
-
Originality_Assessment_Report.md
- Similarity analysis
- Innovation classification
- Impact prediction
-
Reviewer_Assessment_Report.md
- 7-dimension scores
- Identified issues
- Optimization recommendations
-
Optimized_Detailed_Outline.md ⭐ Main Deliverable
- Complete structure to 3rd-level headings
- Word count allocations
- Content guidance for each section
- Key citations to include
Ready for Next Step
With the Optimized_Detailed_Outline.md, proceed to academic-paper-composer skill to write the full paper.
Quality Assurance System
Quality Standards Reference
For detailed evaluation criteria, load:
references/quality_standards.md
This document defines:
- Sample paper selection criteria
- Literature search comprehensiveness metrics
- Gap identification requirements
- Reviewer assessment rubrics
- Quality gate thresholds
Evaluation Scripts
Two Python scripts support quality validation:
1. Sample Paper Evaluator
python scripts/evaluate_samples.py
Function: Validates collected sample papers against quality standards
- Checks time distribution
- Calculates average relevance
- Verifies diversity
- Generates evaluation report
When to Use: After Step 1.2 (sample paper search)
2. Gap Analysis Validator
python scripts/gap_analysis.py
Function: Validates identified research gaps
- Checks evidence sufficiency (≥3 per gap)
- Validates gap definitions
- Assesses significance justifications
- Generates gap portfolio report
When to Use: After Step 2.2 (gap identification)
Decision Points (Interactive)
This skill has 3 key decision points where I pause for your input:
Decision Point 1: Platform Selection (Step 1.1)
I provide: Platform analysis + recommendation
You decide: Accept recommendation or suggest alternative
Decision Point 2: Core Concepts (Step 2.4)
I provide: 3-5 proposed core concepts + rationale
You decide: Confirm, adjust, or supplement concepts
Decision Point 3: Optimization Acceptance (Step 3.3)
I provide: Prioritized list of improvements + recommendations
You decide: Accept all, select specific ones, or request modifications
Example Usage
User Request
"I want to write a philosophy paper about self-continuity during sleep, arguing that narrative compression maintains identity across sleep-wake cycles."
Skill Response
Phase 1: Platform Analysis
- Analyzing topic... Recommended platform: PhilArchive (philosophy of mind focus)
- Searching sample papers... [AI searches with keywords: "self-continuity", "sleep", "personal identity", "phenomenology"]
- Found 10 candidates, evaluating... ✓ 8 papers meet quality standards
- Extracting writing patterns... ✓ Style guide generated
Phase 2: Theoretical Framework
- Conducting literature search...
- Round 1: 25 papers on self/sleep/memory
- Round 2: 12 papers bridging philosophy + neuroscience
- Round 3: 8 classic papers (Dennett, Thompson, Metzinger)
- Total: 45 papers in literature base
- Identifying gaps... ✓ 4 gaps found:
- Gap 1: Compression mechanism (how self is rebuilt)
- Gap 2: Functional explanation (why continuity needed)
- Gap 3: Philosophical implications of discontinuity
- Gap 4: Integration of phenomenology + neuroscience
- Assessing originality... ✓ 62% similarity (medium), integrative innovation, impact score: 8/10
- Decision Point 2: Proposed core concepts: narrative compression, periodic death, self-model transparency, memory consolidation. [User confirms]
Phase 3: Outline Optimization
- Designing initial outline... ✓ 6 chapters, 9,600 words total
- Reviewer assessment... Score: 26/35 (below threshold)
- Issues found: Methodological clarity (3/5), Originality expression (3/5)
- Decision Point 3: Recommendations:
- Add explicit methodology section (High priority)
- Strengthen differentiation from existing work (High priority)
- [User accepts both]
- Regenerating outline... ✓ New score: 30/35 (passes)
Output: Optimized_Detailed_Outline.md ready for writing phase
Tips for Best Results
Provide Clear Research Ideas
- The more specific your initial idea, the better the literature search
- Include any philosophers/theories you're building on
- Mention any specific questions you want to address
Trust the AI-Driven Search
- Literature search, gap identification, and originality assessment are fully automated
- I use multiple search strategies to ensure comprehensive coverage
- Quality gates validate that standards are met
Engage at Decision Points
- Your input at the 3 decision points shapes the final outline
- Feel free to adjust my recommendations based on your expertise
- Decisions are collaborative, not automated
Use Quality Validation
- If unsure about quality, I can re-run evaluation scripts
- Reports provide objective metrics and concrete feedback
- Quality gates ensure no phase proceeds without meeting standards
Iterate if Needed
- If Phase 1 fails quality gates, we re-search with adjusted criteria
- If Phase 2 reveals insufficient gaps, we pivot research direction
- If Phase 3 scores low, we redesign with clear improvement targets
Limitations and Notes
- Calibrated for philosophy and interdisciplinary papers: May need adjustment for pure empirical sciences or formal logic
- Preprint platform focus: Primarily targets PhilArchive, arXiv, PhilSci-Archive (not peer-reviewed journals)
- Requires web access: Literature search depends on Exa/Tavily MCP tools
- Human judgment still essential: AI provides analysis and recommendations, but you make final decisions
- Complementary to writing skill: This skill produces outlines; use academic-paper-composer for actual writing
Related Skills
Next Step: academic-paper-composer
- Takes the optimized outline from this skill
- Executes systematic writing with quality control
- Produces submission-ready manuscript
Can Be Used Standalone: If you already have a mature outline from another source, you can skip this skill and go directly to academic-paper-composer.
Summary
academic-paper-strategist transforms a research idea into a publication-ready outline through:
- Platform Analysis: Identify optimal venue and learn writing standards (8-10 sample papers)
- Theoretical Framework: AI-driven literature search (35-50 papers) + gap identification (3-5 gaps) + originality assessment
- Outline Optimization: Reviewer-perspective evaluation (7 dimensions) + targeted improvements
Quality Assurance: 3 quality gates + 2 validation scripts ensure each phase meets standards.
Output: Detailed outline ready for systematic writing, with complete supporting documentation.
Estimated Time: 2-4 hours for complete strategic planning (depending on literature availability and iteration needs).