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I have a data set for US precipitation. it has latitude , longitude ,and rainfall amount. it has the following format:

       lon -124   -125  -126 -127 -128
   lat 45  120   110    NA   230  145
       44  NA    130    205  240  195
       43  120   110    NA   235  185
       42  170   140    204   NA  155

this is the link for data set:

https://www.dropbox.com/s/1xxy2ospr9xvy8n/Pmaxupscaled.csv

I want to convert it to this format using R:

    precipitation  lat   lon       
    120            45    -124
    110            45    -125
    NA             45    -126
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@ Ananda Mahto; It has .csv format. –  user3000796 Nov 17 '13 at 3:45
    
@ Ananda Mahto; I added the dput format. –  user3000796 Nov 17 '13 at 4:23
1  
The dput entry seems incomplete, it doesn't work at my end. –  Codoremifa Nov 17 '13 at 4:35
    
@ Ananda Mahto; I add the link for data set. –  user3000796 Nov 17 '13 at 5:44

4 Answers 4

up vote 0 down vote accepted

Since the answers are more than maxed out with "reshape2", here's an option in base R:

a <- read.csv("path/to/Pmaxupscaled.csv", check.names = FALSE)
out <- cbind(lat = a[, 1], setNames(stack(a[-1]), c("precip", "lon")))
head(out)
#    lat precip  lon
# 1 45.0  77.63 -105
# 2 42.5  76.15 -105
# 3 40.0  72.18 -105
# 4 37.5  78.60 -105
# 5 35.0  80.93 -105
# 6 32.5  87.29 -105
tail(out)
#      lat precip lon
# 99  40.0 136.05 -75
# 100 37.5     NA -75
# 101 35.0     NA -75
# 102 32.5     NA -75
# 103 30.0     NA -75
# 104 27.5     NA -75

For the record, this would be my approach with "reshape2":

library(reshape2)
a <- read.csv("path/to/Pmaxupscaled.csv", check.names = FALSE)
names(a)[1] <- "lat"
out <- melt(a, id.vars="lat", value.name="precip", variable.name="lon")
head(out)
#    lat precip  lon
# 1 45.0  77.63 -105
# 2 42.5  76.15 -105
# 3 40.0  72.18 -105
# 4 37.5  78.60 -105
# 5 35.0  80.93 -105
# 6 32.5  87.29 -105
share|improve this answer
    
Thanks a lot. It works. Could you please also tell me how I can delete those rows with "NA" values? –  user3000796 Nov 17 '13 at 16:38
    
@user3000796, starting from the "out <-" step, out <- out[complete.cases(out),] should do it. –  Ananda Mahto Nov 17 '13 at 16:53
    
That was great Anand. Thanks again. –  user3000796 Nov 17 '13 at 16:57

Score one for the simplicity of for loops!

dat <- read.csv('Pmaxupscaled.csv', check.names=F)

mat <- NULL
for (i in 1:dim(dat)[1]){
  for (j in 2:dim(dat)[2]){
    mat <- rbind(mat,c(dat[i,j],dat[i,1],names(dat[j])))
  }
}
mat <- as.data.frame(mat)
names(mat) <- c('precip','lat','lon')
share|improve this answer
    
Not sure how this is a "score one" type of answer. You end up with a data.frame of factors here so you'll have to do a good amount of conversion before you can use the output. –  Ananda Mahto Nov 17 '13 at 8:15
    
It's also ~ 40 times slower than melt or stack the way you've implemented it.... –  Ananda Mahto Nov 17 '13 at 8:25
    
Well, let me explain it to you then! (by a good amount of conversion, do you mean one extra line of code?) The original poster is clearly somewhat new to R. Your first example using stack, it is clear even you think this is an unconventional function as evident by your noting that no one else has used this function in base r.Secondly, it doesn't even produce the output in the correct order that OP wanted. Your second example requires another package! What if he has no internet, doesn't know how to install them, etc etcetc.? That's just more explanation. –  rawr Nov 17 '13 at 13:56
    
My solution: go here, take this value and put it here. Easy to understand even if he has barely used r or zero programming. As for your benchmark analysis, who.cares.?. My benchmark was instant. It ran instantly on my computer. The data set has 112 values. Not rows. Not genes. Not gigs of data, but 112 single entries. What did you do in the time that it took your reshape code run vs my loop? I'm sure it was about ten minutes as you seem to imply. You know what, I was wrong, it's not 1 point--it's two points for for loops. Thank you. –  rawr Nov 17 '13 at 13:56
    
No. You're absolutely right. Most R users never get near the stack function. It's quite an unconventional function for one to use when transforming their data. Here, have a +1. –  Ananda Mahto Nov 17 '13 at 14:58

You will probably need to use the 'reshape2' package -

library(reshape2)
df<- read.table(textConnection('
lat -124   -125  -126 -127 -128
45  120   110    NA   230  145
44  NA    130    205  240  195
43  120   110    NA   235  185
42  170   140    204   NA  155'), header = TRUE)

df2 <- melt(df, id.vars = 'lat')

You will also need to get a workaround for your original column names. R doesn't like numerical column names. This could be a workaround in this specific case -

 df2$variable  <- gsub(x = df2$variable, pattern = "X\\.", replacement = "")
share|improve this answer
    
@ Cordoremifa; I used your command line and I put my data inside ' ' becuse that was just part of my data and I run it and I got this error: Error in scan(file, what, nmax, sep, dec, quote, skip, nlines, na.strings, : line 1 did not have 2 elements –  user3000796 Nov 17 '13 at 3:42
    
That error message seems pretty clear, Line 1 in your data has different number of elements (columns) than other lines which seems to have 2 values. If you look at what I've put inside the '', you will see that I haven't exactly copy pasted your data. You need to do something similar. –  Codoremifa Nov 17 '13 at 3:47
    
Yes I did exactly the same thing. I used notepad to copy and then paste it in R. Then there is no space between variables I think that is the reason . How you copy and paste the data? –  user3000796 Nov 17 '13 at 3:54
    
Let me approach this from the other direction, can you convert your dataset to the format I've started with (manually or automatically)? –  Codoremifa Nov 17 '13 at 5:21
    
this is the link to the data: dropbox.com/s/1xxy2ospr9xvy8n/Pmaxupscaled.csv –  user3000796 Nov 17 '13 at 5:42

I'm not a super reshape2 user but this is what works for me.

library(reshape2)
a <- read.csv("~/Documents/Pmaxupscaled.csv")

# Convert to matrix
a <- as.matrix(a)

# Replace row names with the values from the first column
dimnames(a)[[1]] <- a[, 1]

# Drop the first column
a <- a[, -1]

# Melt the matrix into a data frame.
b <- melt(a, varnames = c("Lat", "Lon"))

# Get rid of "X."
b$Lon <- gsub("X\\.", "", b$Lon)

# Format longitude as negative number
b$Lon <- as.numeric(b$Lon)
b$Lon <- -1 * b$Lon

# Rename precipitation column
names(b)[3] <- "precipitation"
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