
| Term | Description |
|---|---|
| MSE | mean square error |
R2 is also known as the coefficient of determination.

| Term | Description |
|---|---|
| yi | i th observed response value |
| mean response |
| i th fitted response |

While the calculations for adjusted R2 can produce negative values, Minitab displays zero for these cases.
| Term | Description |
|---|---|
![]() | ith observed response value |
![]() | ith fitted response |
![]() | mean response |
| n | number of observations |
| p | number of terms in the model |

While the calculations for R2(pred) can produce negative values, Minitab displays zero for these cases.
| Term | Description |
|---|---|
| yi | i th observed response value |
| mean response |
| n | number of observations |
| ei | i th residual |
| hi | i th diagonal element of X(X'X)–1X' |
| X | design matrix |

| Term | Description |
|---|---|
| n | number of observations |
| ei | ith residual |
| hi | ith diagonal element of X (X' X)-1X' |


Observations with weights of 0 are not in the analysis.
| Term | Description |
|---|---|
| n | the number of observations |
| R | the sum of squares for error for the model |
| wi | the weight of the ith observation |

AICc is not calculated when
.
| Term | Description |
|---|---|
| n | the number of observations |
| p | the number of coefficients in the model, including the constant |

| Term | Description |
|---|---|
| p | the number of coefficients in the model, including the constant |
| n | the number of observations |

| Term | Description |
|---|---|
| SSEp | sum of squared errors for the model under consideration |
| MSEm | mean square error for the model with all candidate terms |
| n | number of observations |
| p | number of terms in the model, including the constant |