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I'm trying to use R to identify bad data automatically. Historically, this has been done by taking all the data in one quarter, calculating a mean and standard deviation, then culling any value more than 4 SD away - then, on the culled data, doing the same thing again (some values are so ridiculous that there is another level of ridiculousness underneath it). Right or wrong, this is the technique being used. I'm trying to write R code to do this using the by function but I don't know how to bind the results of the by function to the original data.

Consider:

x <- c(3,3,3,4,4,4) #values of interest
g <- c('1','1','1','2','2','2') #grouping variable
gmeans <- by(x,g,mean)

the gmeans is a 'by' object which can be coerced into a matrix or a list, but is there an easy way to take those means and cbind() them to the original data, x? I know about merge() but gmeans doesn't have a key by default to use in joining.

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1 Answer 1

up vote 1 down vote accepted

Use ave instead, then put altogether in a data.frame

> data.frame(x, g, mean=ave(x, g, FUN=mean))
  x g mean
1 3 1    3
2 3 1    3
3 3 1    3
4 4 2    4
5 4 2    4
6 4 2    4
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1  
+1 Was about to post the same thing except with cbind. As a bonus, if the function is mean, it can be left out with ave :-) –  Ananda Mahto Dec 30 '13 at 16:14
1  
Thanks, I was unaware of ave. This is fantastic. –  Mark Dec 31 '13 at 13:06

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