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A clear guide to R-Squared (R²), explaining how it measures correlation strength between assets and market benchmarks.
R-Squared (R²) is a statistical measure that shows how much of a portfolio’s or asset’s performance can be explained by movements in a benchmark index. It indicates the strength of the relationship between two variables — often used in finance to measure how well a stock’s returns track the market.
Key takeaway: An R² close to 1 means strong correlation with the market, while a low R² indicates weak or no correlation.
R-Squared (R²) measures the percentage of variation in an investment’s returns that can be explained by changes in a benchmark index, typically expressed as a value between 0 and 1 (or 0% to 100%).
R² helps investors determine whether a fund’s performance is driven by market trends or independent management decisions. It’s crucial in assessing diversification, benchmarking, and the reliability of performance metrics like Beta and Alpha.
| Feature or Aspect | R-Squared (R²) | Beta (β) |
|---|---|---|
| Measures | Correlation strength | Sensitivity to market movement |
| Value Range | 0–1 (or 0%–100%) | Any real number |
| Interpretation | Fit quality | Volatility relative to market |
| Use Case | Model reliability | Risk assessment |
For market-tracking funds, 85–100% is ideal. For hedge or alternative funds, lower values show desirable independence.
R² validates whether Beta and Alpha are meaningful — if R² is too low, those metrics are less reliable.
R² is the square of the correlation coefficient (r) and shows the proportion of variance explained.
No, it only describes how well past data fit the model — not future outcomes.