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In R, how do you generate a vector (data) with outliers? Great if the data is "acceptable" normal distributed.

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closed as off-topic by Ferdinand.kraft, Simon O'Hanlon, Señor O, Roland, Thomas Sep 20 '13 at 13:42

This question appears to be off-topic. The users who voted to close gave these specific reasons:

  • "Questions asking for code must demonstrate a minimal understanding of the problem being solved. Include attempted solutions, why they didn't work, and the expected results. See also: Stack Overflow question checklist" – Roland, Thomas
  • "Questions concerning problems with code you've written must describe the specific problem — and include valid code to reproduce it — in the question itself. See SSCCE.org for guidance." – Ferdinand.kraft, Simon O'Hanlon, Señor O
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You can combine the various RNGs in R like runif, rnorm, rgamma to get a mixture model that is "acceptably" normal with some added noise. That said, your question is too broad for this forum. Please be more specific. –  Ferdinand.kraft Sep 18 '13 at 20:28
    
In my opinion it is a worthwhile question to ask. I did not ask for a syntax example. Just a hint. Thus, your degree of detail is appropriate and a sound answer, too. Thank you. –  feder Sep 18 '13 at 20:38
    
@feder your question could also be closed under the off topic: Questions asking for code must demonstrate a minimal understanding of the problem being solved, as well as the too broad category. Please see how to make a great reproducible example for more tips on asking a well formed question. –  Simon O'Hanlon Sep 18 '13 at 20:44
    
Too broad. In all honesty you could argue rnorm(100) will produce outliers by definition. –  Señor O Sep 18 '13 at 22:16
    
I concur. Of course a distribution creates outliers. otherwise it would not be a distribution (having a default value 1) and thus it would be simply multiple observation of the very exact occurance. I'm new to this R-Tag and the R software at all. Hence, I simply assumed that people answering quetions would simply IMPLY that I'm looking for an answer as Ferdinand, Dwin and gung have recommended. i.e. a graph with a small kurtosis or skewness. There should be nothing wrong with general questions, if not asking for more than a general answer. But that is my humble opinion valid for every context –  feder Sep 19 '13 at 6:20

2 Answers 2

up vote 1 down vote accepted

This really depends on the definition of "outlier";

    c(rnorm(100), 100, -100) # an egregious example
   plot(density( c( rnorm(90), rnorm(5, 1) ) ) ) # not as egregious
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@DWin is right that this depends on what you mean by "outlier". For the record, I use the same definition that he is using, so I would use (have used) something like the code he, and @Ferdinand.kraft, list. Others sometimes mean a datum more extreme than you might typically find. This is tricky to define for a simulation study, but a common definition is a point more than 1.5 times the interquartile range past the 1st (3rd) quartile. Here is a simple way to find that (I'm sure there will be more efficient ways):

flag <- 0
while(flag==0){                                
  X  <- rnorm(N)                                    
  bp <- boxplot(X, plot=FALSE)  
  if(length(bp$out)!=0){ 
    flag <- 1
  }
}
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