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R² vs Adjusted R²
Formula Breakdown
Model Assumptions & Notes
- Assumes standard OLS regression with an intercept.
- R² measures in-sample fit only, not out-of-sample predictive accuracy.
- Adjusted R² penalizes model complexity — more regressors is not necessarily better.
- AIC and BIC use a reduced OLS comparison form: constant terms are omitted, so raw values may differ from software output. Values are valid for ranking models estimated on the same dependent variable and sample.
- Lower AIC/BIC indicates a better fit-complexity tradeoff. BIC penalizes more heavily than AIC for n ≥ 8.
- For educational purposes. Not financial advice. Market conventions simplified.
Frequently Asked Questions
Disclaimer
This calculator is for educational purposes only. R-squared, adjusted R-squared, AIC, and BIC are in-sample fit metrics and do not guarantee out-of-sample predictive accuracy. AIC and BIC values use a reduced OLS comparison formula — raw values may differ from statistical software but rankings are preserved. Always verify results against your software output.
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