# Numpy stateing that invalid value while calculating normalized mahalanobis distance

## Note:

This is for a homework assignment in my data mining class.

I'm going to put relevant code snippets on this SO post, but you can find my entire program at http://pastebin.com/CzNFbLJ2

The dataset I'm using for this program can be found at http://archive.ics.uci.edu/ml/datasets/Iris

So I'm getting: RuntimeWarning: invalid value encountered in sqrt return np.sqrt(m)

I am attempting to find the average Mahalanobis distance of the given iris dataset (for both raw and normalized datasets). The error is only happening on the normalized version of the dataset which is making me wonder if I have incorrectly understood what normalization means (both in code and mathematically).

I thought that normalization means that each component of a vector is divided by it's vector length (causing the vector to add up to 1). I found this SO question How to normalize a 2-dimensional numpy array in python less verbose? and thought it matched up to my concept of normalization. But now my code is reporting that the Mahalanobis distance over the normalized dataset is NAN

``````def mahalanobis(data):
import numpy as np;
import scipy.spatial.distance;
avg   = 0
count = 0

covar = np.cov(data, rowvar=0);
invcovar = np.linalg.inv(covar)

for i in range(len(data)):
for j in range(i + 1, len(data)):
if(j == len(data)):
break
avg += scipy.spatial.distance.mahalanobis(data[i], data[j], invcovar)
count += 1
return avg / count

def normalize(data):
import numpy as np
row_sums = data.sum(axis=1)
norm_data = np.zeros((50, 4))
for i, (row, row_sum) in enumerate(zip(data, row_sums)):
norm_data[i,:] = row / row_sum
return norm_data
``````
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vector length is the square root of its dot product. you can modify your normalize function by changing the second line to `row_sums = (data*data).sum(axis=1)` –  mtadd Apr 19 '13 at 5:46
Hmmm, what would be the benefit of changing that line? –  Rawrgulmuffins Apr 19 '13 at 7:16

Probably too late, but check out page 64-65 in our textbook "Introduction to Data Mining". There's a section called "Normalization or Standardization", which explains the concept of normalized data that Hearne is looking for.

Basically, standardized data set x' = (x - mean(x)) / standardDeviation(x)

Since I see you're using python, here's how to do it using SciPy:

``````normalizedData = (data - data.mean(axis=0)) / data.std(axis=0, ddof=1)
``````
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The book also says normalization can mean (data - data.mean / (data.max - data.min)). I'll try both. –  Rawrgulmuffins Apr 19 '13 at 17:36

You can use `pdist()` to do the distance calculation without for loop:

``````from sklearn import datasets
from scipy.spatial.distance import pdist, squareform
print squareform(pdist(iris.data, 'mahalanobis'))
``````
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However, to scale every vector in your dataset to unit norm use: `norm_data=data/np.sqrt(np.sum(data*data,1))[:,None]`.