Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am having R sample from data 100 times then write those to a text file that my boss can then load into Excel. I currently have R doing the samples but when it comes to writing I can't get the results to be in a single column just different rows. I have tired writeLines, write.table, write, and write.csv. The closest I can get is using write.table.

Dataset <- read.table("clipboard", header=FALSE, sep="", na.strings="", dec=".", strip.white=TRUE)
ThePath = ""
*Replace with where you want it to save
P = .25
*Put the Percentage Value you want to use here
X = round(nrow(Dataset)*P)
Boot1 = sum(sample(Dataset$V1, size=X))
Boot2 = sum(sample(Dataset$V1, size=X))
Boot3 = sum(sample(Dataset$V1, size=X))
Boot4 = sum(sample(Dataset$V1, size=X))
Boot5 = sum(sample(Dataset$V1, size=X))
Boot6 = sum(sample(Dataset$V1, size=X))
Boot7 = sum(sample(Dataset$V1, size=X))
Boot8 = sum(sample(Dataset$V1, size=X))
Boot9 = sum(sample(Dataset$V1, size=X))
Boot10 = sum(sample(Dataset$V1, size=X))
Boot11 = sum(sample(Dataset$V1, size=X))
Boot12 = sum(sample(Dataset$V1, size=X))
Boot13 = sum(sample(Dataset$V1, size=X))
Boot14 = sum(sample(Dataset$V1, size=X))
Boot15 = sum(sample(Dataset$V1, size=X))
Boot16 = sum(sample(Dataset$V1, size=X))
Boot17 = sum(sample(Dataset$V1, size=X))
Boot18 = sum(sample(Dataset$V1, size=X))
Boot19 = sum(sample(Dataset$V1, size=X))
Boot20 = sum(sample(Dataset$V1, size=X))
Boot21 = sum(sample(Dataset$V1, size=X))
Boot22 = sum(sample(Dataset$V1, size=X))
Boot23 = sum(sample(Dataset$V1, size=X))
Boot24 = sum(sample(Dataset$V1, size=X))
Boot25 = sum(sample(Dataset$V1, size=X))
Boot26 = sum(sample(Dataset$V1, size=X))
Boot27 = sum(sample(Dataset$V1, size=X))
Boot28 = sum(sample(Dataset$V1, size=X))
Boot29 = sum(sample(Dataset$V1, size=X))
Boot30 = sum(sample(Dataset$V1, size=X))
Boot31 = sum(sample(Dataset$V1, size=X))
Boot32 = sum(sample(Dataset$V1, size=X))
Boot33 = sum(sample(Dataset$V1, size=X))
Boot34 = sum(sample(Dataset$V1, size=X))
Boot35 = sum(sample(Dataset$V1, size=X))
Boot36 = sum(sample(Dataset$V1, size=X))
Boot37 = sum(sample(Dataset$V1, size=X))
Boot38 = sum(sample(Dataset$V1, size=X))
Boot39 = sum(sample(Dataset$V1, size=X))
Boot40 = sum(sample(Dataset$V1, size=X))
Boot41 = sum(sample(Dataset$V1, size=X))
Boot42 = sum(sample(Dataset$V1, size=X))
Boot43 = sum(sample(Dataset$V1, size=X))
Boot44 = sum(sample(Dataset$V1, size=X))
Boot45 = sum(sample(Dataset$V1, size=X))
Boot46 = sum(sample(Dataset$V1, size=X))
Boot47 = sum(sample(Dataset$V1, size=X))
Boot48 = sum(sample(Dataset$V1, size=X))
Boot49 = sum(sample(Dataset$V1, size=X))
Boot50 = sum(sample(Dataset$V1, size=X))
Boot51 = sum(sample(Dataset$V1, size=X))
Boot52 = sum(sample(Dataset$V1, size=X))
Boot53 = sum(sample(Dataset$V1, size=X))
Boot54 = sum(sample(Dataset$V1, size=X))
Boot55 = sum(sample(Dataset$V1, size=X))
Boot56 = sum(sample(Dataset$V1, size=X))
Boot57 = sum(sample(Dataset$V1, size=X))
Boot58 = sum(sample(Dataset$V1, size=X))
Boot59 = sum(sample(Dataset$V1, size=X))
Boot60 = sum(sample(Dataset$V1, size=X))
Boot61 = sum(sample(Dataset$V1, size=X))
Boot62 = sum(sample(Dataset$V1, size=X))
Boot63 = sum(sample(Dataset$V1, size=X))
Boot64 = sum(sample(Dataset$V1, size=X))
Boot65 = sum(sample(Dataset$V1, size=X))
Boot66 = sum(sample(Dataset$V1, size=X))
Boot67 = sum(sample(Dataset$V1, size=X))
Boot68 = sum(sample(Dataset$V1, size=X))
Boot69 = sum(sample(Dataset$V1, size=X))
Boot70 = sum(sample(Dataset$V1, size=X))
Boot71 = sum(sample(Dataset$V1, size=X))
Boot72 = sum(sample(Dataset$V1, size=X))
Boot73 = sum(sample(Dataset$V1, size=X))
Boot74 = sum(sample(Dataset$V1, size=X))
Boot75 = sum(sample(Dataset$V1, size=X))
Boot76 = sum(sample(Dataset$V1, size=X))
Boot77 = sum(sample(Dataset$V1, size=X))
Boot78 = sum(sample(Dataset$V1, size=X))
Boot79 = sum(sample(Dataset$V1, size=X))
Boot80 = sum(sample(Dataset$V1, size=X))
Boot81 = sum(sample(Dataset$V1, size=X))
Boot82 = sum(sample(Dataset$V1, size=X))
Boot83 = sum(sample(Dataset$V1, size=X))
Boot84 = sum(sample(Dataset$V1, size=X))
Boot85 = sum(sample(Dataset$V1, size=X))
Boot86 = sum(sample(Dataset$V1, size=X))
Boot87 = sum(sample(Dataset$V1, size=X))
Boot88 = sum(sample(Dataset$V1, size=X))
Boot89 = sum(sample(Dataset$V1, size=X))
Boot90 = sum(sample(Dataset$V1, size=X))
Boot91 = sum(sample(Dataset$V1, size=X))
Boot92 = sum(sample(Dataset$V1, size=X))
Boot93 = sum(sample(Dataset$V1, size=X))
Boot94 = sum(sample(Dataset$V1, size=X))
Boot95 = sum(sample(Dataset$V1, size=X))
Boot96 = sum(sample(Dataset$V1, size=X))
Boot97 = sum(sample(Dataset$V1, size=X))
Boot98 = sum(sample(Dataset$V1, size=X))
Boot99 = sum(sample(Dataset$V1, size=X))
Boot100 = sum(sample(Dataset$V1, size=X))
write.list(data.frame(sum(Boot1), sum(Boot2), sum(Boot3), sum(Boot4), sum(Boot5), sum(Boot6), sum(Boot7), sum(Boot8), sum(Boot9), sum(Boot10), sum(Boot11), sum(Boot12), sum(Boot13), sum(Boot14), sum(Boot15), sum(Boot16), sum(Boot17), sum(Boot18), sum(Boot19), sum(Boot20), sum(Boot21), sum(Boot22), sum(Boot23), sum(Boot24), sum(Boot25), sum(Boot26), sum(Boot27), sum(Boot28), sum(Boot29), sum(Boot30), sum(Boot31), sum(Boot32), sum(Boot33), sum(Boot34), sum(Boot35), sum(Boot36), sum(Boot37), sum(Boot38), sum(Boot39), sum(Boot40), sum(Boot41), sum(Boot42), sum(Boot43), sum(Boot44), sum(Boot45), sum(Boot46), sum(Boot47), sum(Boot48), sum(Boot49), sum(Boot50), sum(Boot51), sum(Boot52), sum(Boot53), sum(Boot54), sum(Boot55), sum(Boot56), sum(Boot57), sum(Boot58), sum(Boot59), sum(Boot60), sum(Boot61), sum(Boot62), sum(Boot63), sum(Boot64), sum(Boot65), sum(Boot66), sum(Boot67), sum(Boot68), sum(Boot69), sum(Boot70), sum(Boot71), sum(Boot72), sum(Boot73), sum(Boot74), sum(Boot75), sum(Boot76), sum(Boot77), sum(Boot78), sum(Boot79), sum(Boot80), sum(Boot81), sum(Boot82), sum(Boot83), sum(Boot84), sum(Boot85), sum(Boot86), sum(Boot87), sum(Boot88), sum(Boot89), sum(Boot90), sum(Boot91), sum(Boot92), sum(Boot93), sum(Boot94), sum(Boot95), sum(Boot96), sum(Boot97), sum(Boot98), sum(Boot99), sum(Boot100)), file=ThePath, row.name=FALSE, col.name=FALSE sep="/r")

I have tried to use write.list and just write but nothing is getting the output I am looking for. I also tried making it into a csv and also space as a sep and they all turn out like this

25026689/r19976650/r13281740/r15783000/r36507540/r15811400/r15799460

or with , or spaces where the /r are.
I am looking for something like this

25026689
19976650
13281740
15783000
36507540
15811400
15799460

I know my code is super bruteforceish and can be done way cleaner and easier with counts and loops but I am still learning most of the coding.

share|improve this question
1  
To have carriage return use \r not /r. But I think Excel uses commas ,, semicolons ; or tabs \t. –  zch Nov 21 '12 at 23:06
    
Zomg thank you. I read that then looked at my code and didn't see a difference. Then it clicked. –  DanTheMan Nov 21 '12 at 23:17
    
You could take away a bit of the leg work by doing something like: result <- replicate(100,sum(sample(Dataset$V1,X))) then use write.csv(result,"filename.csv") A csv file can be opened straight into Excel then. –  thelatemail Nov 21 '12 at 23:21
    
if you just want your boss to be able to read it into excel, why not write a csv that he can open directly? –  Glen_b Nov 22 '12 at 0:31
    
@Glen_b Well, If in the time of my internship I can get the code to allow the input and output the way I am looking then that will work better. Currently this will need to have to be run around 60 times as there is 60 different datasets. The data out of the database doesn't come exactly clean and my boss is less savvy (I'm a 4 out of 10 on programming savvy) than I am. So this way he can just copy the column of data then run this in R, then copy the text document output into a new excel file. Not exactly efficient as you have to do this 60ish times but it gets the job done for him. –  DanTheMan Nov 22 '12 at 1:08

1 Answer 1

up vote 3 down vote accepted

Your problem is that you are creating a data frame with a single row. In Excel this will be represented in the same way (i.e. one row, instead of one column).

The solution is to create a single vector that contains your bootstrap values.

This is the perfect time to get acquainted with sapply or its close cousin replicate:

boot <- data.frame(
  boot = replicate(100, sum(runif(100)))
)
head(boot)
      boot
1 50.84482
2 49.57098
3 52.75195
4 52.20751
5 48.55071
6 50.76622

Easy, isn't it?


Now your code turns into:

Dataset <- read.table("clipboard", header=FALSE, sep="", na.strings="", 
                      dec=".", strip.white=TRUE)
ThePath <-  ""
#Replace with where you want it to save
P <- .25
#Put the Percentage Value you want to use here
X <- round(nrow(Dataset)*P)


boot <- data.frame(
  boot = replicate(100, sum(sample(Dataset$V1, size=X)))
)
write.csv(boot, file=="your_file_name", row.names=FALSE)

Disclaimer: untested - I don't have your data

share|improve this answer
    
Wow, thank you for the insight on making it not so ugly and much much cleaner. –  DanTheMan Nov 21 '12 at 23:18
1  
Damn, I should refresh before writing comments. +1 Btw - shouldn't the write.csv call only have one = instead of ==? –  thelatemail Nov 21 '12 at 23:25
    
Is there anyway to make it so when it writes to the csv there isn't a count column? –  DanTheMan Nov 21 '12 at 23:29
1  
Yes, use row.names=FALSE –  Andrie Nov 21 '12 at 23:30

Your Answer

 
discard

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.