Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

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;


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) 


ddply(tempdata, .(City), funcreg)

Gives output of:

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


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, 
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
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|)"])                       

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
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.