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I'm a new user of R and I'm a little bit stuck, my data looks like this:

dates        temp
01/31/2011    40
01/30/2011    34
01/29/2011    30
01/28/2011    52
01/27/2011    39
01/26/2011    37
...
01/01/2011    31

i want take only temp under 40 degrees and with the dates of beginning and the end and how many days it lasts, for example:

from         to           days
01/29/2011   01/30/2011     2
01/26/2011   01/27/2011     2

I tried with difftime but it didn't work, maybe with a function it will.

any help would be appreciated.

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3 Answers 3

up vote 3 down vote accepted

I'd do something like this. I'll use data.table here.

df <- read.table(header=TRUE, text="dates        temp
01/31/2011    40
01/30/2011    34
01/29/2011    30
01/28/2011    52
01/27/2011    39
01/26/2011    37", stringsAsFactors=FALSE)

require(data.table)
dt <- data.table(df)
dt <- dt[, `:=`(date.form = as.Date(dates, format="%m/%d/%Y"), 
          id = cumsum(as.numeric(temp >= 40)))][temp < 40]
dt[, list(from=min(date.form), to=max(date.form), count=.N), by=id]

#    id       from         to count
# 1:  1 2011-01-29 2011-01-30     2
# 2:  2 2011-01-26 2011-01-27     2

The idea is to first create a column with the dates column converted to Date format first. Then, another column id that finds the positions where temp >= 40 and uses that to create the group of values that are within two temp>=40. That is, if you have c(40, 34, 30, 52, 39, 37), then you'd want c(1,1,1,2,2,2). That is, everything between to values >= 40, must belong to the same group (34, 30 -> 1 and 39, 37 -> 2). After doing this, I'd remove temp >= 40 entries.

then, you can split by this group and then take min and max and length(.) (which is by default stored in .N).

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tyvm, the idea is very clever, i don't why but it says impossible to find ":="!! do i have to load a package or something? –  Marco Mar 25 '13 at 14:23
    
The package is data.table. you'll have to install it. The tick marks enclosing ` := ` are essential and must be included <tick>:=<tick>(...). –  Arun Mar 25 '13 at 14:31
    
Yay, it works!!! thanks again –  Marco Mar 25 '13 at 15:07

First read in the data. read.zoo handles many of the details all in one line including reordering the data to be ascending and converting the dates to "Date" class. If z is the resulting zoo object then coredata(z) gives the temperatures and time(z) gives the dates.

Lines <- "
dates        temp
01/31/2011    40
01/30/2011    34
01/29/2011    30
01/28/2011    52
01/27/2011    39
01/26/2011    37
"

library(zoo)
z <- read.zoo(text = Lines, header = TRUE, format = "%m/%d/%Y")

The crux of all this is the use of rle which computes lengths and values from which we can derive all quantities:

tt <- time(z)
with(rle(coredata(z) < 40), {
   to <- cumsum(lengths)[values]
   lengths <- lengths[values]
   from <- to - lengths + 1
   data.frame(from = tt[from], to = tt[to], days = lengths)
})

Using the first 6 lines of the input data shown we get:

       from          to   days
1 2011-01-26 2011-01-27      2
2 2011-01-29 2011-01-30      2
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actually, i tried with rle but i couldn't do it, thank you :) –  Marco Mar 26 '13 at 8:22

Not as elegant as Arun's data.table but here is base solution

DF <- read.table(text = "dates        temp\n01/31/2011    40\n01/30/2011    34\n01/29/2011    30\n01/28/2011    52\n01/27/2011    39\n01/26/2011    37", 
    header = TRUE, stringsAsFactors = FALSE)

DF$dates <- as.POSIXct(DF$dates, format = "%m/%d/%Y")
DF <- DF[order(DF$dates), ]
DF$ID <- cumsum(DF$temp >= 40)
DF2 <- DF[DF$temp < 40, ]

# Explanation split : split DF2 by DF2$ID 
# lapply : apply function on each list element given by split
# rbind : bind all the data together

do.call(rbind, lapply(split(DF2, DF2$ID), function(x) 
            data.frame(from = min(x$dates),  
                       to = max(x$dates), 
                       count = length(x$dates))))
##         from         to count
## 0 2011-01-26 2011-01-27     2
## 1 2011-01-29 2011-01-30     2
share|improve this answer
    
another good idea as well!! thanks for help, i added decreasing=TRUE because i wanted the dates in the other way. –  Marco Mar 25 '13 at 14:25
    
Seems elegant to me! :) –  Arun Mar 25 '13 at 14:56

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