GOFTest {Qtools} | R Documentation |
Goodness-of-Fit Tests for Quantile Regression Models
Description
This function calculates a goodness-of-fit test for quantile regression models.
Usage
GOFTest(object, type = "cusum", alpha = 0.05, B = 100, seed = NULL)
Arguments
object |
an object of |
type |
the type of the test. See details. |
alpha |
the significance level for the test. This argument is relevant for |
B |
the number of Monte Carlo samples. This argument is relevant for |
seed |
see for random numbers. This argument is relevant for |
Details
This function provides goodness-of-fit tests for quantile regression. Currently, there is only one method available (type = "cusum"
), for a test based on the cusum process of the gradient vector (He and Zhu, 2013). The critical value at level alpha
is obtained by resampling. Other methods will be implemented in future versions of the package.
Value
GOFTest
returns an object of class
GOFtest
.
Author(s)
Marco Geraci
References
He XM, Zhu LX. A lack-of-fit test for quantile regression. Journal of the American Statistical Association (2003);98:1013-1022.
Examples
## Not run:
data(barro, package = "quantreg")
fit <- quantreg::rq(y.net ~ lgdp2 + fse2 + gedy2 + Iy2 + gcony2, data = barro, tau = c(.1,.5,.9))
GOFTest(fit)
## End(Not run)