6

I haven't found this answer on SO, so I am sharing it here:

Question: How do you emulate sortrows functionality in matlab when there are multiple sorting keys? In matlab, this looks like e.g.:

sortrows(x,[3,-4])

which sorts first by the 3rd column and then by the second column.

If you were sorting by one column, you could use np.argsort to find the indices of that column, and apply those indices. But how do you do it for multiple columns?

4

The syntax is quite unwieldy and looks weird, but the cleanest thing to do is np.lexsort.

data = np.array([[3, 0, 0, .24],
                 [4, 1, 1, .41],
                 [2, 1, 1, .63],
                 [1, 1, 3, .38]]) #imagine rows of a spreadsheet
#now do sortrows(data,[3,-4])
ix = np.lexsort((data[:, 3][::-1], data[:, 2])) 
#this yields [0, 2, 1, 3]

#note that lexsort sorts first from the last row, so sort keys are in reverse order

data[ix]
0

EDIT2: as negative inicies in python have meaning, I think they should not be used to specify descending order for the column, therefore I used here an auxiliary Descending-object.

import numpy as np

class Descending:
    """ for np_sortrows: sort column in descending order """
    def __init__(self, column_index):
        self.column_index = column_index

    def __int__(self):  # when cast to integer
        return self.column_index


def np_sortrows(M, columns=None):
    """  sorting 2D matrix by rows
    :param M: 2D numpy array to be sorted by rows
    :param columns: None for all columns to be used,
                    iterable of indexes or Descending objects
    :return: returns sorted M
    """
    if len(M.shape) != 2:
        raise ValueError('M must be 2d numpy.array')
    if columns is None:  # no columns specified, use all in reversed order
        M_columns = tuple(M[:, c] for c in range(M.shape[1]-1, -1, -1))
    else:
        M_columns = []
        for c in columns:
            M_c = M[:, int(c)]
            if isinstance(c, Descending):
                M_columns.append(M_c[::-1])
            else:
                M_columns.append(M_c)
        M_columns.reverse()

    return M[np.lexsort(M_columns), :]

data = np.array([[3, 0, 0, .24],
                 [4, 1, 1, .41],
                 [2, 1, 3, .25],
                 [2, 1, 1, .63],
                 [1, 1, 3, .38]])

# third column is index 2, fourth column in reversed order at index 3    
print(np_sortrows(data, [2, Descending(3)]))
  • should be fixed now – karna7 Feb 28 '19 at 9:52

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