# Convert a R code into Python script

I got the following R code and I need to convert it to python and run it in python environment, basically I have done this with rpy2 module, but it looks kind of dull with python doing the same things, so could someone find a better way to rewrite the following R code to an equivalent python script with the rpy2 module?

``````mymad <- function (x)
{
center <- median(x)
y <- abs(x - center)
n <- length(y)
if (n == 0)
return(NA)
half <- (n + 1)/2
1.4826 * if (n%%2 == 1) {
sort(y, partial = half)[half]
}
else {
sum(sort(y, partial = c(half, half + 1))[c(half, half +
1)])/2
}
}
``````
-

``````import numpy
# x is the input array
x = numpy.array( [1,2,4,3,1,6,7,5,4,6,7], float ) }
# mad = median( | x - median(x) | )
mad =  numpy.median( numpy.abs( ( x - numpy.median( x ) ) )
``````
-
add some description to answer. – Parixit Mar 18 '14 at 13:41

Probably a little slower than a numpy/Python written one, but certainly faster to implement (as no wheel gets reinvented):

``````# requires rpy2 >= 2.1
from rpy2.robjects.packages import importr
stats = importr('stats')

``````
-

You could have stated the purpose of your function, which is Median Absolute Deviation. What you call `mymad` is an approximation of the standard deviation of the population, based on the assumption of large samples of normally distributed variables.

According to this website:

``````def median(pool):
copy = sorted(pool)
size = len(copy)
if size % 2 == 1:
return copy[(size - 1) / 2]
else:
return (copy[size/2 - 1] + copy[size/2]) / 2
``````

So, you want a function `mad` which would verify :

``````mad(x) == median(abs(x-median(x)))
``````

Thanks to Elenaher (give his comment credits), here is the code:

``````def mad(x):
return median([abs(val-median(x)) for val in x])
``````

And then, I believe your are computing:

``````def mymad(x):
``````
-
The widely used package numpy provides the median function (numpy.median) so don't waste time in reinventing the wheel ! – ThR37 Aug 5 '10 at 16:15
Am i missing something? Assuming x is a list of numbers, (x - median(x)), Python won't do vectorized math. – Mark Aug 5 '10 at 16:16
@Mark yes but numpy does it ! If x is a numpy array you can write x-np.median(x). Otherwise you can use list comprehension : median([abs(val-median(x)) for val in x]) – ThR37 Aug 5 '10 at 16:17
You are right. Well, I believe this is the idea. – Wok Aug 5 '10 at 16:21
thanks, btw, is there functions called Maclist and MLEintvl in R? could not find it... – ligwin Aug 5 '10 at 16:29