# euclidean distance with multiple column of data

My data looks like this:

``````data =

2.29    2.048333333 2   2
2.29    2.048333333 2   2
2.29    2           2   2
2.29    2.064444444 2   2
``````

I want to calculate the euclidean distance between columns. The result is a 4X4 matrix and all diagonal elements are 0 because they are the same.

How can I do this efficiently?

Until now, I only can find out euclidean distance between 2 columns

Should I use them multiple times using loop?

-
Could you show the code you have written so far? A loop is generally a good idea for doing the same thing multiple times. – jonrsharpe Apr 5 '14 at 9:12

Try this:

``````def main(data):
total = []
n = len(data)
for i in range(n):
tmp = []
for j in range(n):
a = data[i];
b = data[j]
tmp.append(dist(data[i],data[j]))
total.append(tmp)

def dist(a,b):
tmp = [pow(a - b,2) for a, b in zip(a, b)]
return pow(sum(tmp),0.5);

def output(t):#this function is not necessary and is just for tidiness
n = len(t)
for i in range(n):
for j in range(n):
print t[i][j],"\t\t\t",
print "\n"

data = [[1,1,1],[1,2,3],[0,0,0]]#just for test
t = main(data)
output(t)
``````
-

If data is numpy array, this code may be more efficient.

``````dist = np.empty_like(data)
for i, x in enumerate(data):
dist[:, i] = np.sqrt(np.sum((data - x)**2, axis=1))
``````
-
Why not use `scipy.spatial.distnace.cdist(data.T,data.T)`? – Ophion Apr 5 '14 at 14:58
Good suggestion! Thank you – emeth Apr 5 '14 at 15:01