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# Ideas to re-write looping regression with 'for' loops

I'm having a brain freeze, and hoping one of you can point me in the right direction. My end goal is the output of various regression coefficients (mainly interested in price elasticity), which I achieved via simple multiple regression, using the "by" function.

I am using the "by" function to loop through the regression formula for each iteration of the "State.UPC" variable. Since my data is quite large (~1MM rows), I had to subset my data into groups of 3-4 states (see mystates1...mystates10). I am then performing the regression on those subsets, each time changing my data source in the "datastep3" data frame. And this is where I need your help:

What is the best way to efficiently re-write this with a combination of my existing "by" regression function, and the "for" loops, so I can bypass the step of constantly changing the data frame name in "datastep3" and the "write.csv" steps. Essentially R looping through each "mystates" data subset and doing the regression by the "State.UPC" attributes?

I have tried several combinations with no success. Pardon the amateurish question...still learning R. Here is my code:

``````data <-read.csv("PriceData.csv")
datastep1 <-subset(data, subset=c(X..Vol>0, Unit.Vol>0))
datastep2 <- transform(datastep1, State.UPC = paste(State,UPC, sep="."))

mystates1 <- c("AL","AR","AZ")
mystates2 <- c("CA","CO","FL")
mystates3 <- c("GA","IA","IL")
mystates4 <- c("IN","KS","KY")
mystates5 <- c("LA","MI","MN")
mystates6 <- c("MO","MS","NC")
mystates7 <- c("NJ","NM","NV")
mystates8 <- c("NY","OH","OK")
mystates9 <- c("SC","TN","TX")
mystates10 <- c("UT","VA","WI","WV")

datastep3 <-subset(datastep2, subset=State %in% mystates10)
datastep4 <-na.omit(datastep3)

PEbyItem <- by(datastep4, datastep4\$State.UPC, function(df)
lm(log(Unit.Vol)~log(Price) + Distribution+Independence.Day+Labor.Day+Memorial.Day+Thanksgiving+Christmas+New.Years+
Year+Month, data=df))

x <- do.call("rbind",lapply(PEbyItem, coef))
y <-data.frame(x)

write.csv(x, file="mystates10.csv", row.names=TRUE)
``````
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## migrated from stats.stackexchange.comApr 1 '14 at 16:42

This question came from our site for people interested in statistics, machine learning, data analysis, data mining, and data visualization.

Impossible to test this because you do not provide any data, but theoretically you could just combine the various `mystatesN` into a list and then run `lapply(...)` on that.

``````## Not tested...
get.PEbyItem <- function(i) {
datastep3 <-subset(datastep2, subset=State %in% mystates[[i]])
datastep4 <-na.omit(datastep3)
PEbyItem  <- by(datastep4, datastep4\$State.UPC, function(df)
lm(log(Unit.Vol)~log(Price) + Distribution+Independence.Day+Labor.Day+
Memorial.Day+Thanksgiving+Christmas+New.Years+Year+Month,
data=df))
x <- do.call("rbind",lapply(PEbyItem, coef))
y <-data.frame(x)
write.csv(x, file=paste(names(mystates[i]),"csv",sep="."), row.names=TRUE)
}

mystates <- list(ms1=mystates1, ms2=mystates2, ..., ms10=mystates10)
lapply(1:length(mystates),get.PEbyItem)
``````

There are lots of other things that could be improved but without the dataset it's pointless to try.

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This works perfectly - thanks a lot. Will study the code to fully understand and use the logic in the future. – akakas Apr 1 '14 at 18:49
akakas - the *apply functions (apply, lapply, sapply, tapply etc) are among the central workhorses of 'idiomatic' R. You get much more back for the effort of learning them. They're not necessarily faster (in some cases, perhaps even a little slower than a well-written loop), but they make for more compact and understandable/maintainable code. – Glen_b Apr 1 '14 at 20:41
Thank you, @Glen_b . I will definitely work to get those functions more embedded. – akakas Apr 2 '14 at 22:48