Install
openclaw skills install empirical-paper-analysis-skillAnalyzes empirical law and economics papers by systematically evaluating problems, empirical challenges, identification strategies, key findings, and academi...
openclaw skills install empirical-paper-analysis-skillThis skill enables Claude Code to deeply analyze empirical research papers, following a structured framework: Problem Statement → Core Empirical Challenges → Identification Strategy → Key Findings → Academic Contribution.
Researchers in law and economics who regularly read and analyze empirical papers in law and economics, especially with quantitative methods (econometrics, machine learning, NLP, etc.).
Objective: Identify the core research question and its motivation.
Analysis Points:
Objective: Identify the key methodological obstacles that make causal inference difficult.
Common Challenges to Look For:
Output Format: For each challenge:
Objective: Explain how the paper solves the empirical challenges.
Key Elements:
Critical Analysis:
Objective: Summarize the main empirical results and their interpretation.
Structure:
Format:
Objective: Evaluate the paper's broader significance.
Dimensions:
Generate a structured markdown document following this template:
# [Paper Title]
**Authors:** [List]
**Journal:** [Name, Year]
**DOI/Link:** [If available]
## 问题的提出
[Analysis following framework above]
## 实证研究的核心难题
### 难题一:[Name]
[Explanation]
### 难题二:[Name]
[Explanation]
## 识别策略与方法设计
### 数据来源
[Description]
### 识别策略
[Core identification approach]
### 方法设计
[Technical details]
## 重要发现与结论
- **发现一:** [Finding with magnitude]
- **发现二:** [Finding with magnitude]
- **政策含义:** [Implications]
## 学术价值
- **方法论贡献:** [Innovation]
- **理论贡献:** [Insights]
- **政策相关性:** [Relevance]
Academic Tone: Use precise academic language appropriate for PhD-level analysis. Assume familiarity with econometric concepts (DID, IV, RDD, etc.) and ML methods (GBDT, NLP, embeddings).
Bilingual Output: Primary language is Chinese (as shown in the examples), but technical terms can be included in parentheses with English abbreviation when first introduced.
Mathematical Rigor: Don't shy away from mathematical notation when describing models or identification strategies. For example:
Critical Thinking: Don't just summarize—analyze. Question assumptions, evaluate identification strength, consider alternative explanations.
Tables/Figures: When referencing tables or figures from the paper:
Scope: Focus on the five core sections. Don't add unnecessary sections.