I'm writing a moving average function that uses the convolve function in numpy, which should be equivalent to a (weighted moving average). When my weights are all equal (as in a simple arithmatic average), it works fine:
data = numpy.arange(1,11) numdays = 5 w = [1.0/numdays]*numdays numpy.convolve(data,w,'valid')
array([ 3., 4., 5., 6., 7., 8.])
However, when I try to use a weighted average
w = numpy.cumsum(numpy.ones(numdays,dtype=float),axis=0); w = w/numpy.sum(w)
instead of the (for the same data) 3.667,4.667,5.667,6.667,... I expect, I get
array([ 2.33333333, 3.33333333, 4.33333333, 5.33333333, 6.33333333, 7.33333333])
If I remove the 'valid' flag, I don't even see the correct values. I would really like to use convolve for the WMA as well as MA as it makes the code cleaner (same code, different weights) and otherwise I think I'll have to loop through all the data and take slices.
Any ideas about this behavior?