Statistics

Interpreting R² and Confidence in Extrapolation

Extrapolation Calculator Team

When you use the Extrapolation Calculator, each result includes two important metrics: the R² score and the confidence percentage. Understanding these values is crucial for making informed decisions based on your extrapolations.

What is R²?

R² (the coefficient of determination) measures how well the regression line fits the observed data. It ranges from 0 to 1:

  • R² = 1: Perfect fit — the model explains all variance in the data
  • R² = 0: No fit — the model explains none of the variance
  • R² > 0.7: Generally considered a good fit
  • R² < 0.3: Suggests the model is a poor fit

Confidence Metric

The confidence percentage in our calculator is derived from the R² value and represents how reliably the model fits the data pattern. A higher confidence means the extrapolation method you selected aligns well with your data’s trend.

Choosing the Right Method

Comparing R² scores across different methods can help you choose:

  1. Try multiple methods on the same dataset
  2. Compare their R² scores
  3. Select the method with the highest R²
  4. Consider whether the method’s assumptions match your data’s nature

Important Caveats

  • A high R² doesn’t guarantee accurate extrapolation — it only measures fit quality within observed data
  • Extrapolation always carries more uncertainty than interpolation
  • Physical or logical constraints should always override statistical predictions