I can plot one predictor variable (from a mulitvariate logistic, binomial GLM) versus the predicted response. I do it like this:
m3 <- mtcars # example with mtcars model = glm(vs~cyl+mpg+wt+disp+drat,family=binomial, data=m3) newdata <- m3 newdata$cyl <- mean(m3$cyl) newdata$mpg <- mean(m3$mpg) newdata$wt <- mean(m3$wt) newdata$disp <- mean(m3$disp) newdata$drat <- m3$drat newdata$vs <- predict(model, newdata = newdata, type = "response") ggplot(newdata, aes(x = drat, y = vs)) + geom_line()
Above, drat vs vs with all other predictors held constant. However, I would to do this for each of the predictor variables, and doing the above process each time seems tedious. Is there a smarter way to do this? I'd like to visualize the response of each the different predictors and eventually, perhaps, at different constants.