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I have the following image: Plot

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)

share|improve this question
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.

share|improve this answer
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

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