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I have a database (simplied format per below) with cities, different dates, and the temperatures on these dates. I want to calculate for each city the trend over time, and whether this trend is significant.

I think i have to somehow combine ddply together with the lm function (e.g. lm(date ~ temp)) and a call for the coefficients of the fit, but don't know how to do this....

There might be a much simpler solution - many thanks for helping me out;

W

City    Date    Temp (Celcius)
Amsterdam   Jan-01  21
Amsterdam   Mar-01  23
Amsterdam   May-01  25
Barcelona   Feb-01  20
Barcelona   Mar-01  19
Barcelona   May-01  25
Copenhagen  Jan-01  19
Copenhagen  Feb-01  23
Copenhagen  May-01  22

I tried:

This is what I tried:

tempdata=read.csv("tempfile.csv", header=TRUE, sep=",", as.is=TRUE)
tempdata$Date <- as.Date(tempdata$Date, "%d/%m/%Y")

funcreg = function(x) {regmodel=lm(tempdata$Date ~ tempdata$Temperature) 
return(data.frame(regmodel$coefficients[2]))

}

ddply(tempdata, .(City), funcreg)

Gives output of:

        City regmodel.coefficients.2.
1  Amsterdam                 14.71244
2  Barcelona                 14.71244
3 Copenhagen                 14.71244

Dput:

structure(list(City = c("Amsterdam", "Amsterdam", "Amsterdam", 
"Barcelona", "Barcelona", "Barcelona", "Copenhagen", "Copenhagen", 
"Copenhagen"), Date = c("01/01/2001", "01/03/2001", "01/05/2001", 
"01/02/2001", "01/03/2001", "01/05/2001", "01/01/2001", "01/02/2001", 
"01/05/2001"), Temperature = c(21L, 23L, 25L, 20L, 19L, 25L, 
19L, 23L, 22L), X = c(NA, NA, NA, NA, NA, NA, NA, NA, NA)), .Names = c("City", 
"Date", "Temperature", "X"), class = "data.frame", row.names = c(NA, 
-9L))
share|improve this question
    
What have you tried? Also, please dput a sample of your data. –  Ari B. Friedman Dec 17 '12 at 13:54
1  
Use x instead of tempdata inside funcreg. You might also want to think about, which of your variables is the independent and which the dependent. –  Roland Dec 17 '12 at 15:22
    
Thanks - much appreciated - that solves it. dumb mistake on my part. I am a newbie in writing functions. One questions leads though to another - I am intersted in the p-value and t-values of the regression as well. However - the return function only allows output of one variable. I can run multiple functions, and merge the data-frames together, but I was wondering whether there is a smarter way. –  user1885116 Dec 17 '12 at 18:57
    
@Roland, perhaps put your comment as an answer so that the question can be marked as solved? –  Ricardo Saporta Dec 17 '12 at 21:59

1 Answer 1

up vote 1 down vote accepted

Use x instead of tempdata inside funcreg. You should also switch your variables in the regression. Temperature is clearly the dependent here.

tempdata$Date <- as.Date(tempdata$Date,'%d/%m/%Y')

funcreg = function(x) {
  regmodel <- lm(Temperature ~ Date, data=x) 
  data.frame(trend = regmodel$coefficients[2], 
                 p = summary(regmodel)$coef["Date","Pr(>|t|)"])                       
}

library(plyr)
ddply(tempdata, .(City), funcreg)

        City      trend           p
1  Amsterdam 0.03333025 0.006125688
2  Barcelona 0.06301304 0.298501483
3 Copenhagen 0.01696590 0.660997625
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