# Find n greatest numbers in a sparse matrix

I am using sparse matrices as a mean of compressing data, with loss of course, what I do is I create a sparse dictionary from all the values greater than a specified treshold. I'd want my compressed data size to be a variable which my user can choose.

My problem is, I have a sparse matrix with alot of near-zero values, and what I must do is choose a treshold so that my sparse dictionary is of a specific size (or eventually that the reconstruction error is of a specific rate) Here's how I create my dictionary (taken from stackoverflow I think >.< ):

``````n = abs(smat) > treshold #smat is flattened(1D)
i = mega_range[n] #mega range is numpy.arange(smat.shape[0])
v = smat[n]
sparse_dict = dict(izip(i,v))
``````

How can I find treshold so that it is equal to the nth greatest value of my array (smat)?

-

`scipy.stats.scoreatpercentile(arr,per)` returns the value at a given percentile:

``````import scipy.stats as ss
print(ss.scoreatpercentile([1, 4, 2, 3], 75))
# 3.25
``````

The value is interpolated if the desired percentile lies between two points in `arr`.

So if you set `per=(len(smat)-n)/len(smat)` then

``````threshold = ss.scoreatpercentile(abs(smat), per)
``````

should give you (close to) the nth greatest value of the array smat.

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Exactly what I needed thanks! –  Manux Jul 7 '10 at 15:25
You're welcome! –  unutbu Jul 7 '10 at 15:28
Fwiw, scipy/stats.py does np.sort(), then interpolates. There is a std::nth_element and std::partial_sort, but sort() is really fast. –  denis Jul 13 '10 at 10:56
@Denis: Thanks. You're absolutely right. –  unutbu Jul 13 '10 at 12:22