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I have a data.frame in R where one column is a list of dates (many of which are duplicates), whereas the other column is a temperature recorded on that date. The columns in question look like this (but is several thousand rows and a few other unnecessary cols):

Date    |    Temp
-----------------
1/2/13     34.4
1/2/13     36.4
1/2/13     34.3
1/4/13     45.6
1/4/13     33.5
1/5/13     45.2

I need to find a way of getting a daily average for temperature. So ideally, I could tell R to loop through the data.frame and for every date that matched, give me an average for the temperature that day. I've been googling and I know loops in R are possible, but I can't wrap my head around this conceptually given what little I know about R code.

I know I can pull out a single column and average it (i.e. mean(data.frame[[2]])) but I'm utterly lost on how to tell R to match that mean to a single value located in the first column.

Additionally, how could I generate an average for every seven calendar days (regardless of how many entries exist for a single day)? So, a seven day rolling average, i.e. if my date range starts at 1/1/13 I'd get an average for all temps taken between 1/1/13 and 1/7/13, and then between 1/8/13 and 1/15/13 and so on...

Any assistance helping me grasp R loops is much appreciated. Thank you!

EDIT

Here's the output of dput(head(my.dataframe)) PLEASE NOTE: I edited down both "date" and "timestamp" because they both go on for several thousand entries otherwise:

structure(list(RECID = 579:584, SITEID = c(101L, 101L, 101L, 
101L, 101L, 101L), MONTH = c(6L, 6L, 6L, 6L, 6L, 6L), DAY = c(7L, 
7L, 7L, 7L, 7L, 7L), DATE = structure(c(34L, 34L, 34L, 34L, 34L, 
34L), .Label = c("10/1/2013", "10/10/2013", "10/11/2013", "10/12/2013", 
"10/2/2013", "10/3/2013", "10/4/2013", "10/5/2013", "10/6/2013", 
"10/7/2013", "10/8/2013", "10/9/2013", "6/10/2013", "6/11/2013","9/9/2013"), class = "factor"), TIMESTAMP = structure(784:789, .Label = c("10/1/2013 0:00", 
"10/1/2013 1:00", "10/1/2013 10:00", "10/1/2013 11:00", "10/1/2013 12:00", 
"10/1/2013 13:00", "10/1/2013 14:00", "10/1/2013 15:00", "10/1/2013 16:00", 
"10/1/2013 17:00", "10/1/2013 18:00", "10/1/2013 19:00", "10/1/2013 2:00"), class = "factor"), TEMP = c(23.376, 23.376, 23.833, 24.146, 
24.219, 24.05), X.C = c(NA, NA, NA, NA, NA, NA)), .Names = c("RECID", 
"SITEID", "MONTH", "DAY", "DATE", "TIMESTAMP", "TEMP", "X.C"), row.names = c(NA, 
6L), class = "data.frame") 
share|improve this question
    
That dput looks nothing like your sample data! –  Ananda Mahto Apr 20 '14 at 7:28
    
'generate average for every 7 calendar days': do you mean 'average-by-week-of-year', or 'moving 7-day average'? –  smci Apr 20 '14 at 7:29
    
Also, note that R is case-sensitive. Date is not the same as DATE. –  Ananda Mahto Apr 20 '14 at 7:29
    
The output of dput(head(my.dataframe), n=20) or whatever is fine. –  smci Apr 20 '14 at 7:30
    
I got my daily average after I figured out the case sensitive bit. :) I'm now pondering rolling average... I'll edit question but @smci, see my comment to you. –  TheNovice Apr 20 '14 at 7:35

2 Answers 2

up vote 2 down vote accepted
library(plyr)

ddply(df, .(Date), summarize, daily_mean_Temp = mean(Temp))

This is a simple example of the Split-Apply-Combine paradigm.

Alternative #1 as Ananda Mahto mentions, dplyr package is a higher-performance rewrite of plyr. He shows the syntax.

Alternative #2: aggregate() is also functionally equivalent, just has fewer bells-and-whistles than plyr/dplyr.


Additionally 'generate average for every 7 calendar days': do you mean 'average-by-week-of-year', or 'moving 7-day average (trailing/leading/centered)'?

share|improve this answer
    
Good, succinct answer! OP: you probably want to explore the plyr package more generally, too, if you're going to be iterating through data frames - it's endlessly useful. –  user3471268 Apr 20 '14 at 6:54
    
Thanks for the answer @smci, I went ahead and downloaded plyr. I probably I needed to add more specific data because I'm getting the following error when I try your code: Error in unique.default(x) : unique() applies only to vectors Any ideas? –  TheNovice Apr 20 '14 at 7:01
    
I strongly recommend you skip plyr and jump right to dplyr. Cleaner syntax, much better performance, newer code, nicer idiom, more extensible. Trust me on this. –  smci Apr 20 '14 at 7:04
    
I downloaded it. I'm getting the following error now - Error in eval(expr, envir, enclos) : object 'Date' not found Which to me signals I need to do something more w/ my columns that simply import my CSV? –  TheNovice Apr 20 '14 at 7:06
    
You're running @AnandaMahto's sample dplyr code, right? If yes, post the code you're running that is not working - as an addendum above in your original question, not here in the comments. –  smci Apr 20 '14 at 7:14

Here are a few options:

aggregate(Temp ~ Date, mydf, mean)
#     Date     Temp
# 1 1/2/13 35.03333
# 2 1/4/13 39.55000
# 3 1/5/13 45.20000

library(dplyr)
mydf %.% group_by(Date) %.% summarise(mean(Temp))
# Source: local data frame [3 x 2]
# 
#     Date mean(Temp)
# 1 1/2/13   35.03333
# 2 1/4/13   39.55000
# 3 1/5/13   45.20000

library(data.table)
DT <- data.table(mydf)
DT[, mean(Temp), by = Date]
#      Date       V1
# 1: 1/2/13 35.03333
# 2: 1/4/13 39.55000
# 3: 1/5/13 45.20000

library(xts)
dfX <- xts(mydf$Temp, as.Date(mydf$Date))
apply.daily(dfX, mean)
#             [,1]
# 1-02-13 35.03333
# 1-04-13 39.55000
# 1-05-13 45.20000

Since you are dealing with dates, you should explore the xts package, which will give you access to functions like apply.daily, apply.weekly, apply.monthly and so on which will let you conveniently aggregate your data.

share|improve this answer
    
Thanks for the thoughtful response. As a total newb here I'm not sure what to make of this error, but it's showing up a lot when I attempt to apply your solutions: Error in eval(expr, envir, enclos) : object 'Date' not found Do I need to do something else w/ my cols other than import the CSV? In R studio it looks like it recognizes the headers just fine but... –  TheNovice Apr 20 '14 at 7:08
    
@TheNovice, please edit your question to include the output of dput(head(your.actual.data.frame.name)). It will look like a structure(....) with a lot of stuff instead of the ..... Posting that will help us troubleshoot better. –  Ananda Mahto Apr 20 '14 at 7:10
    
that's a lot of output. :) I'll put it up. –  TheNovice Apr 20 '14 at 7:21
    
So, this is a bit embarrassing, but it appears R may be case sensitive. Oops. I've got my daily temp average. Any ideas on how to do a seven day rolling average? –  TheNovice Apr 20 '14 at 7:32

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