# Plot the observed and fitted values from a linear regression using xyplot() from the lattice package

I can create simple graphs. I would like to have observed and predicted values (from a linear regression) on the same graph. I am plotting say `Yvariable` vs `Xvariable`. There is only 1 predictor and only 1 response. How could I also add linear regression curve to the same graph?

So to conclude need help with:

• plotting actuals and predicted both
• plotting regression line
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For the regression line, look at `abline`. –  Thomas Jul 2 '13 at 17:39
@Thomas not useful for a lattice plot though. –  Gavin Simpson Jul 2 '13 at 17:47
@GavinSimpson Oh yea, good point. Didn't read that part closely enough. –  Thomas Jul 2 '13 at 17:49
@Thomas It was somewhat hidden in the title. –  Gavin Simpson Jul 2 '13 at 17:51
i have created the regression model using library caret>>train function –  user2543622 Jul 2 '13 at 17:59
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Here is one option for the observed and predicted values in a single plot as points. It is easier to get the regression line on the observed points, which I illustrate second

First some dummy data

``````set.seed(1)
x <- runif(50)
y <- 2.5 + (3 * x) + rnorm(50, mean = 2.5, sd = 2)
dat <- data.frame(x = x, y = y)
``````

Fit our model

``````mod <- lm(y ~ x, data = dat)
``````

Combine the model output and observed `x` into a single object for plott

``````res <- stack(data.frame(Observed = dat\$y, Predicted = fitted(mod)))
res <- cbind(res, x = rep(dat\$x, 2))
``````

``````require("lattice")

xyplot(values ~ x, data = res, group = ind, auto.key = TRUE)
``````

The resulting plot should look similar to this

To get just the regression line on the observed data, and the regression model is a simple straight line model as per the one I show then you can circumvent most of this and just plot using

``````xyplot(y ~ x, data = dat, type = c("p","r"), col.line = "red")
``````

(i.e. you don't even need to fit the model or make new data for plotting)

The resulting plot should look like this

An alternative to the first example which can be used with anything that will give coefficients for the regression line is to write your own panel functions - not as scary as it seems

``````xyplot(y ~ x, data = dat, col.line = "red",
panel = function(x, y, ...) {
panel.xyplot(x, y, ...)
panel.abline(coef = coef(mod), ...) ## using mod from earlier
}
)
``````

That gives a plot from Figure 2 above, but by hand.

Assuming you've done this with caret then

``````mod <- train(y ~ x, data = dat, method = "lm",
trControl = trainControl(method = "cv"))

xyplot(y ~ x, data = dat, col.line = "red",
panel = function(x, y, ...) {
panel.xyplot(x, y, ...)
panel.abline(coef = coef(mod\$finalModel), ...) ## using mod from caret
}
)
``````

Will produce a plot the same as Figure 2 above.

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I thought your earlier answer to an identical question was better: stackoverflow.com/questions/12972039/… –  IShouldBuyABoat Jul 2 '13 at 17:55
I thought your residuals looked weird (it looks like there are just two different lines the observed values can fall on) and then I realized you messed up the call to `rnorm` when creating y. –  Dason Jul 2 '13 at 17:57
+1 -- Nice demo. (Following up on @Dason' comment, your `rnorm(2.5, sd=2)` evaluates to the same thing as `rnorm(n=2, sd=2)`, with the value then getting recycled out to length 50. You probably wanted `rnorm(50, sd=2)` instead.) –  Josh O'Brien Jul 2 '13 at 18:21
Oops. That was supposed to be mean 2. Will fix! –  Gavin Simpson Jul 2 '13 at 19:51
@user2543622 I don't mean to be rude, but why don't you mention this when you first ask the question? I'll update my answer... sigh –  Gavin Simpson Jul 2 '13 at 20:39

Another option is to use `panel.lmlineq` from `latticeExtra`.

``````library(latticeExtra)
set.seed(0)
xsim <- rnorm(50, mean = 3)
ysim <- (0 + 2 * xsim) * (1 + rnorm(50, sd = 0.3))

## basic use as a panel function
xyplot(ysim ~ xsim, panel = function(x, y, ...) {
panel.xyplot(x, y, ...)
panel.lmlineq(x, y, adj = c(1,0), lty = 1,xol.text='red',
col.line = "blue", digits = 1,r.squared =TRUE)
})
``````

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