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Three summaries are immediately interpretible on the scale of the response variable:
rmse() is the root-mean-squared-error
rmse()
mae() is the mean absolute error
mae()
qae() is quantiles of absolute error.
qae()
Other summaries have varying scales and interpretations:
mape() mean absolute percentage error.
mape()
rsae() is the relative sum of absolute errors.
rsae()
mse() is the mean-squared-error.
mse()
rsquare() is the variance of the predictions divided by the variance of the response.
rsquare()
mse(model, data)rmse(model, data)mae(model, data)rsquare(model, data)qae(model, data, probs = c(0.05, 0.25, 0.5, 0.75, 0.95))mape(model, data)rsae(model, data)
rmse(model, data)
mae(model, data)
rsquare(model, data)
qae(model, data, probs = c(0.05, 0.25, 0.5, 0.75, 0.95))
mape(model, data)
rsae(model, data)
A model
The dataset
Numeric vector of probabilities
# NOT RUN { mod <- lm(mpg ~ wt, data = mtcars) mse(mod, mtcars) rmse(mod, mtcars) rsquare(mod, mtcars) mae(mod, mtcars) qae(mod, mtcars) mape(mod, mtcars) rsae(mod, mtcars) # }
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