# How to replace outliers with the 5th and 95th percentile values in R

I'd like to replace all values in my relatively large R dataset which take values above the 95th and below the 5th percentile, with those percentile values respectively. My aim is to avoid simply cropping these outliers from the data entirely.

Any advice would be much appreciated, I can't find any information on how to do this anywhere else.

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Besides there being many more details required to answer this question are you really sure you want to do this? A relatively large data set of say 100 numbers, will have 5 values below the 5th percentile and 5 above the 95th percentile if there are no outliers. – John Nov 12 '12 at 7:25
Take great care when taking these kinds of measures, you are drastically changing the statistics of your dataset. If this is valid depends on what you are trying to get from the data, and the distribution of the data (e.g. normally distributed). – Paul Hiemstra Nov 12 '12 at 7:37
@RobS be careful with using `=` as an assignment operator. The `<-` can be compounded, but `=` can not – Ricardo Saporta Nov 12 '12 at 8:11
I almost always use `=`, and I've rarely run into trouble. Only in calls like `system.time(bla <- spam())` is the `<-` compulsory. – Paul Hiemstra Nov 12 '12 at 8:49
Bobbo, the missing details would include what the model is and how you're defining your percentiles; whether you wanted empirical cutoffs derived from the data or cutoffs derived from a model and what that model is; and specifically how you wanted the data points replaced... replace with random values using the model parameters?... some other form of imputation? tack back onto the end? Additionally, what you're doing doesn't test robustness by itself. It would require adding something else. – John Nov 12 '12 at 14:56

This would do it.

``````fun <- function(x){
quantiles <- quantile( x, c(.05, .95 ) )
x[ x < quantiles[1] ] <- quantiles[1]
x[ x > quantiles[2] ] <- quantiles[2]
x
}
fun( yourdata )
``````
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+1 now you are faster ;) – Paul Hiemstra Nov 12 '12 at 7:34
Thank you, works like a dream. I'm new to this website, is there any way I can give you rep or something for this answer? – Bobbo Nov 12 '12 at 7:45
you can up the answer(s) and accept it (you accepted it already). See stackoverflow.com/faq which will also give you a badge if you read them all – Romain Francois Nov 12 '12 at 7:56
The above snippet will also replace NAs (if any) by the quantile values! – Bolaka Nov 18 '14 at 12:13

You can do it in one line of code using `squish()`:

``````d2 <- squish(d, quantile(d, c(.05, .95)))
``````

In the scales library, look at `?squish` and `?discard`

``````#--------------------------------
library(scales)

pr <- .95
q  <- quantile(d, c(1-pr, pr))
d2 <- squish(d, q)
#---------------------------------

# Note: depending on your needs, you may want to round off the quantile, ie:
q <- round(quantile(d, c(1-pr, pr)))
``````

example:

``````d <- 1:20
d
# [1]  1  2  3  4  5  6  7  8  9 10 11 12 13 14 15 16 17 18 19 20

d2 <- squish(d, round(quantile(d, c(.05, .95))))
d2
# [1]  2  2  3  4  5  6  7  8  9 10 11 12 13 14 15 16 17 18 19 19
``````
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I used this code to get what you need:

``````qn = quantile(df\$value, c(0.05, 0.95), na.rm = TRUE)
df = within(df, { value = ifelse(value < qn[1], qn[1], value)
value = ifelse(value > qn[2], qn[2], value)})
``````

where `df` is your data.frame, and `value` the column that contains your data.

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thank you for your answer, both yours and the one above work perfectly – Bobbo Nov 12 '12 at 7:45