# Smooth a binary variable using moving average or kernel smoothing

I have data of the form:

``````x      y
0      0
0.01   1
0.03   0
0.04   1
0.04   0
``````

`x` is continuous from 0 to 1 and not equally spaced and y is binary.

I'd like to smooth `y` over the x-axis using R, but can't find the right package. The kernel smoothing functions I've found produce density estimates of `x` or will give the wrong estimate at the ends of the x because they'll average over regions less than 0 and greater than 1.

I'd also like to avoid linear smoothers like Loess givens then binary form of `y`. The moving average functions I've seen assume equally-spaced x-values.

Do you know of any R functions that will smooth and ideally have a bandwidth selection procedure? I can write a moving average function and cross-validate to determine the bandwidth, but I'd prefer to find an existing function that's been vetted.

-

I would suggest using something like

``````d <- data.frame(x,y) ## not absolutely necessary but good practice
library(mgcv)
m1 <- gam(y~s(x),family="binomial",data=d)
``````

This will (1) respect the binary nature of the data (2) do automatic degree-of-smoothness ("bandwidth" in your terminology) selection, using generalized cross-validation.

Use

``````plot(y~x, data=d)
pp <- data.frame(x=seq(0,1,length=101))
pp\$y <- predict(m1,newdata=pp,type="response")
with(pp,lines(x,y))
``````

or

``````library(ggplot2)
ggplot(d,aes(x,y))+geom_smooth(method="gam",family=binomial)
``````

to get predictions/plot the results.

(I hope your real data set has more than 5 observations ... otherwise this will fail ...)

-
Made a couple of edits. Hope you don't mind. Some example data (for anyone who wants to try out Ben's code) is: `set.seed(1); d <- data.frame(x=seq(0,0.3, by=0.01), y=rbinom(31, 1, prob=0.5))`. –  Josh O'Brien Dec 17 '12 at 16:59
To get uneven spacing, as in the question: `d <- data.frame(x=seq(0,0.3, by=0.01) + .009*rnorm(31), y=rbinom(31, 1, prob=0.5)` –  Matthew Lundberg Dec 17 '12 at 17:15
Thanks Ben, Josh and Matthew. I'm familiar with GLM's, but GAM's are new to me and I would never have thought of using them. –  user1910316 Dec 17 '12 at 17:36
With my data, 15% of the x region has a predicted value greater than 1, even though y can't be greater than 1. Is it valid to set all predicted values above 1 equal to 1? Thanks. –  user1910316 Dec 17 '12 at 17:43
are you already using the `type="response"` argument suggested in @JoshO'Brien's edit to my answer? –  Ben Bolker Dec 17 '12 at 19:55