The following explanation is not limited to logistic regression but applies equally in normal linear regression and other GLMs. Usually, R
excludes one level of the categorical and the coefficients denote the difference of each class to this reference class (or sometimes called baseline class) (this is called dummy coding or treatment contrasts in R
, see here for an excellent overview of the different contrast options). To see the current contrasts in R
, type options("contrasts")
. Normally, R
orders the levels of the categorical variable alphabetically and takes the first as reference class. This is not always optimal and can be changed by typing (here, we would set the reference class to "c" in the new variable) new.variable <- relevel(old.variable, ref="c")
. For each coefficient of every level of the categorical variable, a Wald test is performed to test whether the pairwise difference between the coefficient of the reference class and the other class is different from zero or not. This is what the $z$ and $p$-values in the regression table are. If only one categorical class is significant, this does not imply that the whole variable is meaningless and should be removed from the model. You can check the overall effect of the variable by performing a likelihood ratio test: fit two models, one with and one without the variable and type anova(model1, model2, test="LRT")
in R
(see example below). Here is an example:
mydata <- read.csv("https://stats.idre.ucla.edu/stat/data/binary.csv")
mydata$rank <- factor(mydata$rank)
my.mod <- glm(admit ~ gre + gpa + rank, data = mydata, family = "binomial")
summary(my.mod)
Coefficients:
Estimate Std. Error z value Pr(>|z|)
(Intercept) -3.989979 1.139951 -3.500 0.000465 ***
gre 0.002264 0.001094 2.070 0.038465 *
gpa 0.804038 0.331819 2.423 0.015388 *
rank2 -0.675443 0.316490 -2.134 0.032829 *
rank3 -1.340204 0.345306 -3.881 0.000104 ***
rank4 -1.551464 0.417832 -3.713 0.000205 ***
---
Signif. codes: 0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1
The level rank1
has been omitted and each coefficient of rank
denotes the difference between the coefficient of rank1
and the corresponding rank
level. So the difference between the coefficient of rank1
and rank2
would be $-0.675$. The coefficient of rank1
is simply the intercept. So the true coefficient of rank2
would be $-3.99 - 0.675 = -4.67$. The Wald tests here test whether the difference between the coefficient of the reference class (here rank1
) and the corresponding levels differ from zero. In this case, we have evidence that the coefficients of all classes differ from the coefficient of rank1
. You could also fit the model without an intercept by adding - 1
to the model formula to see all coefficients directly:
my.mod2 <- glm(admit ~ gre + gpa + rank - 1, data = mydata, family = "binomial")
summary(my.mod2) # no intercept model
Coefficients:
Estimate Std. Error z value Pr(>|z|)
gre 0.002264 0.001094 2.070 0.038465 *
gpa 0.804038 0.331819 2.423 0.015388 *
rank1 -3.989979 1.139951 -3.500 0.000465 ***
rank2 -4.665422 1.109370 -4.205 2.61e-05 ***
rank3 -5.330183 1.149538 -4.637 3.54e-06 ***
rank4 -5.541443 1.138072 -4.869 1.12e-06 ***
---
Signif. codes: 0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1
Note that the intercept is gone now and that the coefficient of rank1
is exactly the intercept of the first model. Here, the Wald test checks not the pairwise difference between coefficients but the hypothesis that each individual coefficient is zero. Again, we have evidence that every coefficient of rank
differs from zero.
Finally, to check whether the whole variable rank
improves the model fit, we fit one model with (my.mod1
) and one without the variable rank
(my.mod2
) and conduct a likelihood ratio test. This tests the hypothesis that all coefficients of rank
are zero:
my.mod1 <- glm(admit ~ gre + gpa + rank, data = mydata, family = "binomial") # with rank
my.mod2 <- glm(admit ~ gre + gpa, data = mydata, family = "binomial") # without rank
anova(my.mod1, my.mod2, test="LRT")
Analysis of Deviance Table
Model 1: admit ~ gre + gpa + rank
Model 2: admit ~ gre + gpa
Resid. Df Resid. Dev Df Deviance Pr(>Chi)
1 394 458.52
2 397 480.34 -3 -21.826 7.088e-05 ***
---
Signif. codes: 0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1
The likelihood ratio test is highly significant and we would conclude that the variable rank
should remain in the model.
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