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Dear colleauges, I would like to observe the evolution of the linear regression coefficients over time. To be more precise, lets have a time frame of 2 years where the linear regression will allways use the data set with the range of 1 year length. After first regression, we move one week further (ie. we add new week, but one is also substracted from the beginning) and do the regression again as long as we reach the final date => all together 52 regressions. The problem that I have is that there are some holidays in the data set and we can not simply add 7 days as one would easily suggest. More or less I would like to have some wrapper function that would do above mentioned for many other functions from different packages for ex. forecast.lm in forecast package or any function that one can think of- the objective in every case would be the evolution as the time passes by one week. Any suggestions which way to go would be grateful. Alex

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Alex, there's a lot of things going on in your "question" yet there's no question. What is one thing you would like help with? If it's the date issue, what type of solution are you looking for with respect to holidays? If you're looking for help with a "wrapper" function, please define what you've tried and what your problem is. As it currently stands, this question should be closed on the grounds of it not being a question. –  JD Long May 13 '11 at 18:27
    
Do you want to do localized regression in a window() ? stat.ethz.ch/R-manual/R-patched/library/stats/html/window.html ...... –  bill_080 May 13 '11 at 18:45
    
I know it is a very broad toppic, so put it in a nutshell. First:The data sets includes holidays and I need to deal with it. Second: I would like to get the coefficients of lin. regression every monday(and preserving the length of the data base of one year- so as I said before- one week add, but one remove). It is like to slice the whole period into weeks, create 52 time vectors (with length one year) and for every do the regression. –  Alex May 15 '11 at 8:28

1 Answer 1

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I think you might get more answers if you edit/subdivide your question in a clear way. (1) how do I find holidays (it's not clear what your definition of holidays is)? (2) how do I slice up a data set accordingly? (3) how do I run a linear regression in each chunk?

(1) find holidays: can't really help here, as I don't know how they're defined/coded in your data set. library(sos); findFn("holiday") finds some options

(2) partition the data set according to inter-holiday/weekend intervals. The example below supposes holidays are coded as 1 and non-holidays are coded as zero.

(3) run the linear regression for each chunk and extract the coefficients.

d <- data.frame(holiday=c(0,0,0,1,1,0,0,0,0,1,0,0,0,0),
     x=runif(14),y=runif(14))
per <- cumsum(c(1,diff(d$holiday)==-1))  ## maybe use rle() instead
dd <- with(d,split(subset(d,!holiday),per[!holiday]))
t(sapply(lapply(dd,lm,formula=y~x),coef))
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