In some occasions, the optimization algorithm of femlm may fail to converge, or the variance-covariance matrix may not be available. The most common reason of why this happens is collinearity among variables. This function helps to find out which set of variables is problematic.
collinearity(x, verbose)
Arguments
x: A fixest object obtained from, e.g. functions femlm, feols or feglm.
verbose: An integer. If higher than or equal to 1, then a note is prompted at each step of the algorithm. By default verbose = 0 for small problems and to 1 for large problems.
Returns
It returns a text message with the identified diagnostics.
Details
This function tests: 1) collinearity with the fixed-effect variables, 2) perfect multi-collinearity between the variables, 3) perfect multi-collinearity between several variables and the fixed-effects, and 4) identification issues when there are non-linear in parameters parts.
Examples
# Creating an example data base:set.seed(1)fe_1 = sample(3,100,TRUE)fe_2 = sample(20,100,TRUE)x = rnorm(100, fe_1)**2y = rnorm(100, fe_2)**2z = rnorm(100,3)**2dep = rpois(100, x*y*z)base = data.frame(fe_1, fe_2, x, y, z, dep)# creating collinearity problems:base$v1 = base$v2 = base$v3 = base$v4 =0base$v1[base$fe_1 ==1]=1base$v2[base$fe_1 ==2]=1base$v3[base$fe_1 ==3]=1base$v4[base$fe_2 ==1]=1# Estimations:# Collinearity with the fixed-effects:res_1 = femlm(dep ~ log(x)+ v1 + v2 + v4 | fe_1 + fe_2, base)collinearity(res_1)# => collinearity with the first fixed-effect identified, we drop v1 and v2res_1bis = femlm(dep ~ log(x)+ v4 | fe_1 + fe_2, base)collinearity(res_1bis)# Multi-Collinearity:res_2 = femlm(dep ~ log(x)+ v1 + v2 + v3 + v4, base)collinearity(res_2)