返回 Skill 列表
extension
分类: 开发与工程无需 API Key

performing-causal-analysis

使用CausalPy拟合因果模型,估计影响,并绘制结果。在使用差异法(DiD)、中断时间序列(ITS)、合成控制(SC)或回归不连续(RD)进行分析时使用。

person作者: jakexiaohubgithub

Performing Causal Analysis

Executes causal analysis using CausalPy experiment classes.

Workflow

  1. Load Data: Ensure data is in a Pandas DataFrame.
  2. Initialize Experiment: Use the appropriate class (see References).
  3. Fit & Model: Models are fitted automatically upon initialization if arguments are provided.
  4. Analyze Results: Use summary(), print_coefficients(), and plot().

Core Methods

  • experiment.summary(): Prints model summary and main results.
  • experiment.plot(): Visualizes observed vs. counterfactual.
  • experiment.print_coefficients(): Shows model coefficients.

References

Detailed usage for specific methods: