# Argmax of each row or column in scipy sparse matrix

`scipy.sparse.coo_matrix.max` returns the maximum value of each row or column, given an axis. I would like to know not the value, but the index of the maximum value of each row or column. I haven't found a way to make this in an efficient manner yet, so I'll gladly accept any help.

From scipy version 0.19, both `csr_matrix` and `csc_matrix` support `argmax()` and `argmin()` methods.

I would suggest studying the code for

``````moo._min_or_max_axis
``````

where `moo` is a `coo_matrix`.

``````mat = mat.tocsc()  # for axis=0
mat.sum_duplicates()

major_index, value = mat._minor_reduce(min_or_max)
not_full = np.diff(mat.indptr)[major_index] < N
value[not_full] = min_or_max(value[not_full], 0)

return coo_matrix((value, (np.zeros(len(value)), major_index)),
dtype=self.dtype, shape=(1, M))
``````

Depending on the axis it prefers to work with csc over csr. I haven't had time analyze this, but I'm guessing it should be possible to include `argmax` in the calculation.

This suggestion may not work. The key is the `mat._minor_reduce` method, which does, with some refinement:

``````ufunc.reduceat(mat.data, mat.indptr[:-1])
``````

That is is applies the `ufunc` to blocks of the matrix `data` array, using the `indptr` to define the blocks. `np.sum`, `np.maxiumum` are `ufunc` where this works. I don't know of an equivalent `argmax` ufunc.

In general if you want to do things by 'row' for a csr matrix (or col of csc), you either have to iterate over the rows, which is relatively expensive, or use this `ufunc.reduceat` to do the same thing over the flat `mat.data` vector.

group argmax/argmin over partitioning indices in numpy tries to perform a `argmax.reduceat`. The solution there might be adaptable to a sparse matrix.

If `A` is your `scipy.sparse.coo_matrix`, then you get the row and column of the maximum value as follows:

``````I=A.data.argmax()
maxrow = A.row[I]
maxcol=A.col[I]
``````

To get the index of maximum value on each row see the EDIT below:

``````from scipy.sparse import coo_matrix
import numpy as np
row  = np.array([0, 3, 1, 0])
col  = np.array([0, 2, 3, 2])
data = np.array([-3, 4, 11, -7])
A= coo_matrix((data, (row, col)), shape=(4, 4))
print A.toarray()

nrRows=A.shape[0]
maxrowind=[]
for i in range(nrRows):
r = A.getrow(i)# r is 1xA.shape[1] matrix
maxrowind.append( r.indices[r.data.argmax()] if r.nnz else 0)
print maxrowind
``````

`r.nnz` is the the count of explicitly-stored values (i.e. nonzero values)

• Wouldn't this just produce one single value, not for each row or column? – Jimmy C Jun 9 '15 at 23:11
• Yes, you are right. See the EDIT! – xecafe Jun 10 '15 at 7:22

The latest release of the numpy_indexed package (disclaimer: I am its author) can solve this problem in an efficient and elegant manner:

``````import numpy_indexed as npi
col, argmax = group_by(coo.col).argmax(coo.data)
row = coo.row[argmax]
``````

Here we group by col, so its the argmax over the columns; swapping row and col will give you the argmax over the rows.

Expanding on the answers from @hpaulj and @joeln and using code from group argmax/argmin over partitioning indices in numpy as suggested, this function will calculate argmax over columns for CSR or argmax over rows for CSC:

``````import numpy as np
import scipy.sparse as sp

def csr_csc_argmax(X, axis=None):
is_csr = isinstance(X, sp.csr_matrix)
is_csc = isinstance(X, sp.csc_matrix)
assert( is_csr or is_csc )
assert( not axis or (is_csr and axis==1) or (is_csc and axis==0) )

major_size = X.shape[0 if is_csr else 1]
major_lengths = np.diff(X.indptr) # group_lengths
major_not_empty = (major_lengths > 0)

result = -np.ones(shape=(major_size,), dtype=X.indices.dtype)
split_at = X.indptr[:-1][major_not_empty]
maxima = np.zeros((major_size,), dtype=X.dtype)
maxima[major_not_empty] = np.maximum.reduceat(X.data, split_at)
all_argmax = np.flatnonzero(np.repeat(maxima, major_lengths) == X.data)
result[major_not_empty] = X.indices[all_argmax[np.searchsorted(all_argmax, split_at)]]
return result
``````

It returns -1 for the argmax of any rows (CSR) or columns (CSC) that are completely sparse (i.e., that are completely zero after `X.eliminate_zeros()`).