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I have a gaussian_kde.resample array. I don't know if it is a numpy array so that I can use numpy functions.

I had the data 0<x<=0.5 of 3000 variables and I used

kde = scipy.stats.gaussian_kde(x) # can also mention bandwidth here (x,bandwidth)
sample = kde.resample(100000) # returns 100,000 values that follow the prob distribution of "x"

This gave me a sample of data that follows the probability distribution of "x". But the problem is, no matter what bandwidth I try to select, I get very few negative values in my "sample". I only want values within the range 0 < sample <= 0.5

I tried to do:

 sample = np.array(sample) # to convert this to a numpy array
 keep = 0<sample<=0.5
 sample = sample[keep] # using the binary conditions

But this does not work! How can I remove the negative values in my array?

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2 Answers 2

up vote 1 down vote accepted

First of all, the return value of kde.resample is a numpy array, so you do not need to reconvert it.

The problem lies in the line (Edit: No, it doesn't. This should work!)

keep = 0 < sample <= 0.5

It does not do what you would think. Try:

keep = (0 < sample) * (sample <= 0.5)
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I would like to know how the & didn't work and * did?? –  ThePredator Jun 13 '14 at 22:01
    
They should both work. As I also demonstrated. –  jonnybazookatone Jun 13 '14 at 22:02
    
My bad, I was wrong when claiming the line wouldn't work. It really should. (I didn't realise python interpreted the chained comparison as a special case without casting to bool in between.) –  DrV Jun 13 '14 at 22:06
    
And yes, there is no difference between & and * in this case. (So, actually jonnybazookatone's answer is better and more correct than mine!) –  DrV Jun 13 '14 at 22:07

Firstly, you can check what type it is by using the 'type' call within python:

x = kde.resample(10000)
type(x)
numpy.ndarray

Secondly, it should be working in the way you wrote, but I would be more explicit in your binary condition:

print x
array([[ 1.42935658, 4.79293343, 4.2725778 , ..., 2.35775067, 1.69647609]]) 
x.size
10000
y = x[(x>1.5) & (x<4)]

which you can see, does the correct binary conditions and removes the values >1.5 and <4:

print y
array([ 2.95451084, 2.62400183, 2.79426449, ..., 2.35775067, 1.69647609])
y.size
5676
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I get a TypeError: ufunc 'bitwise_and' not supported for the input types, and the inputs could not be safely coerced to any supported types according to the casting rule ''safe'' –  ThePredator Jun 13 '14 at 21:57
    
Paste here what you tried. –  jonnybazookatone Jun 13 '14 at 21:59
    
for some reason, & does not work!! * does!! –  ThePredator Jun 13 '14 at 22:03
    
No worries, enjoy. –  jonnybazookatone Jun 13 '14 at 22:05

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