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# How can you draw a smooth line or 95% pointwise interval in R?

I have the following image:

And I would like to smooth the red and blue line. But I have no idea how to do it. The red and blue lines respectively represent upper & lower 95% intervals of the black dots. (Notice that I didnt use any regression formula to obtain the 95% intervals) I read about the loess function but when i tried to use it. I get back the same plot. So is there any particular built in R function that will allow me to smooth these 2 lines.

Alternatively, is there a way to obtain a "95% point wise intervals" for this problem ?

The code is given below:

``````residual.plot <- function(a,b)
{
log.y1 <- log(a) - b * log(energy)
fitted.y <- exp(log.y1)
diff <- count - fitted.y
#normal approximation
low.interval <- c()
high.interval <- c()
for(i in 1:350)
{
low <- diff[i] - sqrt(  exp(log(a) - b * log(energy[i])) )*qnorm(0.975)
high <- diff[i] + sqrt(  exp(log(a) - b * log(energy[i]))  )*qnorm(0.975)
low.interval <- append(low.interval, low)
high.interval <- append(high.interval, high)
}
par(mfrow = c(1,1))
plot(energy, diff, ylim = c(-10,10), type = "p", pch = 7)
lines(energy, low.interval, type = "p", col = "red", pch = 1)
lines(energy, high.interval, type = "p", col = "blue", pch = 1)

}
``````
-
Could you provide your `a` and `b` variables as well? (`dput(a)` and `dput(b)` would be good) – David Robinson Dec 21 '12 at 17:21
And where has `count` mysteriously come from? And `energy`? Anyway, if you want smooth 95% intervals you have to compute them from your model. What is your model? Is there a model? I can't actually see one... – Spacedman Dec 21 '12 at 17:25
Sorry. count & energy are variables from the dataset , which is defined outside the function. – mynameisJEFF Dec 21 '12 at 18:24
a , b are values (can be any numbers) – mynameisJEFF Dec 21 '12 at 18:24

First of all, never ever dare posting code like that again. You commit two mortal sins :

• you grow objects in an iterative loop (tons of problems there)
• you don't use the fact that R works vectorized.

This said, the easiest way of doing this is by using `lowess`, provided there's no NA values in your data. Your function should be then something like this :

``````residual.plot <- function(a,b,count,energy)
{
log.y1 <- log(a) - b * log(energy)
fitted.y <- exp(log.y1)
diff <- count - fitted.y

#normal approximation
low <- diff - sqrt(  exp(log(a) - b * log(energy)) )*qnorm(0.975)
high <- diff + sqrt(  exp(log(a) - b * log(energy))  )*qnorm(0.975)

par(mfrow = c(1,1))
plot(energy, diff, ylim = c(-10,10), type = "p", pch = 7)
lines(lowess(energy, low), type = "p", col = "red", pch = 1)
lines(lowess(energy, high), type = "p", col = "blue", pch = 1)

}
``````

PS: To make a function useful, you shouldn't count on variables from outside the function like for example `count` and `energy`. Add them as an argument to the function, so you can use the function later on when using a different dataset.

-
I'm guessing you want `lines(lowess(energy,low), ...)` – 42- Dec 21 '12 at 17:44
+1! I wish I could +2! No so much for the `lowess` bit -which is useful and answers the direct question- but for the few hints about writing R-ic code. So many newcomers to R fail to get the `vectorized` nature of much of the language. The hint about using `function parameters` is a generic programming best practice, but beware that in R parameters are passed mostly "by-value". A good read for newbies and even for more seasoned R practitioners is the `R Inferno` (burns-stat.com/pages/Tutor/R_inferno.pdf) – mjv Dec 21 '12 at 17:45
I am a newbie in R. What do you mean by R works vectorised – mynameisJEFF Dec 21 '12 at 18:25
@DWin Indeed, thx for the correction – Joris Meys Dec 21 '12 at 18:37
@Chinegro The short answer is that many functions and operators in R work on complete vectors, so you don't have to write out loops for that. I strongly advise you to go through the online manuals you can find (plenty of resources) or, if you want, Andrie and I wrote an introduction book on R as well. We keep a strong focus on vectorization through the whole book. – Joris Meys Dec 21 '12 at 18:42