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in R, I would like to find a way to write a for loop using the following math equation and a .csv file.

Here is an example showing two rows in a .csv file.

6/27/2010 8:45  131.04
6/27/2010 9:00  111.11

The second column would be x in the following equation.

http://i.stack.imgur.com/inOKV.jpg

I need help writing the equation above and a for loop that writes .csv file with load variability.

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2  
Can you read your csv into R, like with X=read.csv("pathtofile"). If so, can you add dput(head(X)) to your question? –  Seth Aug 10 '12 at 18:31
    
Yes, I have the code, but did want to post because I know that it is completely wrong. What does dput(head(X)) do? I searched and it is for a debian package upload tool? I am confused. –  Python_R Aug 10 '12 at 20:16
    
dput is an R function, as is head. Use ?function_name to get the documentation of that function, e.g. ?head. –  Paul Hiemstra Aug 10 '12 at 21:07

1 Answer 1

To get the L_var for a certain set of numbers I believe this would work:

l_var = sd(x) / mean(x)

where x is the vector of numbers. Next we wrap it in a function:

l_var = function(x) sd(x) / mean(x)
outcome = l_var(input)

where input is a vector of numbers, and outcome the outcome of the math equation.

If your timestamp column is of class POSIXlt, you can use strftime to create a factor column where you categorize your data. See this SO answer for more details on this step. Next you can use ddply from the plyr package to get the l_var per category (say a day):

result = ddply(df, .(cat), summarise, l_var = l_var(value))

where df is the input data.frame where cat is the time category, and value the x value in your equation above. To write the result to file you can use write.csv:

write.csv(result, file = "out.csv")

I think this covers about all the steps...

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1  
You might want to add na.rm=TRUE to sd() and mean() or some other method for addressing missing values. –  BondedDust Aug 10 '12 at 19:09
    
Thank you so much! –  Python_R Aug 10 '12 at 19:11
1  
I'm a bit worried that there is no consideration for the 15 minute period in this solution. I would have thought that a zoo:rollapply approach would have been needed. –  BondedDust Aug 10 '12 at 19:59
    
I agree with @DWin, I do not have much experience with zoo. Could you provide an example @DWin? –  Paul Hiemstra Aug 10 '12 at 20:12
1  
If the questioner decides that his data needs to have a rolling average or an aggregation step, which I am still unclear about, he should first do a search: [r] rolling average ... or perhaps: [r] aggregate interval –  BondedDust Aug 10 '12 at 20:26

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