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Upon performing binary logistic regression, I have found VIF, using R programming, as follows:

             GVIF Df  GVIF^(1/(2*Df))
agem     2.213242  3        1.141576
eduM     2.842857  3        1.190216
eduF     2.576725  3        1.170877
ageC     1.315301  1        1.146866
diarrhea 1.031031  1        1.015397
uweight  1.129919  1        1.062977
fever    1.033433  1        1.016579
res      1.341470  1        1.158218
dis      1.440215  6        1.030866
WI       2.610752  4        1.127446
nlc      2.407934  3        1.157730

Based on those results, should I remove agem, eduM, eduF, WI and nlc for multi-collinearity? Or do I need to apply another approach? Could anybody help me?

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    $\begingroup$ Perhaps, you will find this answer of mine helpful. $\endgroup$ Commented Apr 8, 2015 at 0:45
  • $\begingroup$ Three words: elastic net regression $\endgroup$
    – Sycorax
    Commented Apr 8, 2015 at 1:49

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