stephsus
2012-Oct-20 23:26 UTC
[R] rms plot.Predict question: swapping x- and y- axis for categorical predictors
Hello all, I'm trying to plot the effects of variables estimated by a regression model fit individually, and for categorical predictors, the independent variable shows up on the y-axis, with the dependent variable on the x-axis. Is there a way to prevent this reversal? Sample code with dummy data: # make dummy data set.seed(1) x1 <- runif(200) x2 <- sample(c(1,2),200, TRUE) x3 <- sample(c(0,1),200,T) x4 <- runif(200) # the dependent variable: distance <- (x1/3 + x2 + rnorm(200)^2 - x3 - x4/2) # factor two vars, and add to datadist: x3 <- factor(x3) x2 <- factor(x2) d <- datadist(x1,x2,x3,x4) options(datadist="d") # Make a simple model: f <- ols(distance ~ x1 + x2 + x4+ x3, x=T) # plot variable effect of a categorical variable: plot(Predict(f, x2)) ^ above step generates a plot with x2 on the y-axis and distance on the x-axis, which is the opposite of what I'm aiming for. The continuous variables do not have this problem; nor does the plot(Predict(f)) function to plot all of the effects at once. Thank you so much in advance for your replies! My apologies if this question has been answered already; I've tried searching to no avail. Best, Stephanie (Stanford University, Department of Linguistics) -- View this message in context: http://r.789695.n4.nabble.com/rms-plot-Predict-question-swapping-x-and-y-axis-for-categorical-predictors-tp4646891.html Sent from the R help mailing list archive at Nabble.com.
Frank Harrell
2012-Oct-22 01:40 UTC
[R] rms plot.Predict question: swapping x- and y- axis for categorical predictors
Stephanie, I'm working on an option for the plot method for Predict that will allow you to do this. Note that this approach will not result in very readable predictor category labels when they are long character strings. If you are using linux I can get you a new version of rms with this option as soon as I've finished it, otherwise I can give you a workaround using source( ). If you don't hear from me in a few days please write back. Frank stephsus wrote> Hello all, > > I'm trying to plot the effects of variables estimated by a regression > model fit individually, and for categorical predictors, the independent > variable shows up on the y-axis, with the dependent variable on the > x-axis. Is there a way to prevent this reversal? > > Sample code with dummy data: > > # make dummy data > set.seed(1) > x1 <- runif(200) > x2 <- sample(c(1,2),200, TRUE) > x3 <- sample(c(0,1),200,T) > x4 <- runif(200) > > # the dependent variable: > distance <- (x1/3 + x2 + rnorm(200)^2 - x3 - x4/2) > > # factor two vars, and add to datadist: > x3 <- factor(x3) > x2 <- factor(x2) > > d <- datadist(x1,x2,x3,x4) > options(datadist="d") > > # Make a simple model: > f <- ols(distance ~ x1 + x2 + x4+ x3, x=T) > > # plot variable effect of a categorical variable: > plot(Predict(f, x2)) > > ^ above step generates a plot with x2 on the y-axis and distance on the > x-axis, which is the opposite of what I'm aiming for. The continuous > variables do not have this problem; nor does the plot(Predict(f)) function > to plot all of the effects at once. > > Thank you so much in advance for your replies! My apologies if this > question has been answered already; I've tried searching to no avail. > > Best, > Stephanie > > (Stanford University, Department of Linguistics)----- Frank Harrell Department of Biostatistics, Vanderbilt University -- View this message in context: http://r.789695.n4.nabble.com/rms-plot-Predict-question-swapping-x-and-y-axis-for-categorical-predictors-tp4646891p4646953.html Sent from the R help mailing list archive at Nabble.com.
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