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Average prediction mean squared error.
ols_hsp(model)
Hocking's Sp of the model.
An object of class lm.
lm
Hocking's Sp criterion is an adjustment of the residual sum of Squares. Minimize this criterion.
$$MSE / (n - p - 1)$$
where \(MSE = SSE / (n - p)\), n is the sample size and p is the number of predictors including the intercept
Hocking, R. R. (1976). “The Analysis and Selection of Variables in a Linear Regression.” Biometrics 32:1–50.
Other model selection criteria: ols_aic(), ols_apc(), ols_fpe(), ols_mallows_cp(), ols_msep(), ols_sbc(), ols_sbic()
ols_aic()
ols_apc()
ols_fpe()
ols_mallows_cp()
ols_msep()
ols_sbc()
ols_sbic()
model <- lm(mpg ~ disp + hp + wt + qsec, data = mtcars) ols_hsp(model)
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