If you have a list of indices specifying the outliers location in the vector, e.g. using:

```
out_idx = which(df$value > quan0.99)
```

You can do something like:

```
for(idx in out_idx) {
vec[(idx-1):(idx+1)] = mean(vec[(idx-1):(idx+1)])
}
```

You can wrap this in a function, making the bandwith and the function an optional parameter:

```
average_outliers = function(vec, outlier_idx, bandwith, func = "mean") {
# iterate over outliers
for(idx in out_idx) {
# slicing of arrays can be used for extracting information, or in this case,
# for assiging values to that slice. do.call is used to call the e.g. the mean
# function with the vector as input.
vec[(idx-bandwith):(idx+bandwith)] = do.call(func, out_idx[(idx-bandwith):(idx+bandwith)])
}
return(vec)
}
```

allowing you to also use `median`

with a bandwith of 2. Using this function:

```
# Call average_outliers multiple times on itself,
# first for the 0.99 quantile, then for the 0.01 quantile.
vec = average_outliers(vec, which(vec > quan0.99))
vec = average_outliers(vec, which(vec < quan0.01))
```

or:

```
vec = average_outliers(vec, which(vec > quan0.99), bandwith = 2, func = "median")
vec = average_outliers(vec, which(vec < quan0.01), bandwith = 2, func = "median")
```

to use a bandwith of 2, and replace with the median value.