import pytest
import numpy as np
import scipy.sparse as sp
from scipy import linalg
from numpy.testing import assert_array_almost_equal, assert_array_equal
from numpy.random import RandomState
from sklearn.datasets import make_classification
from sklearn.utils.sparsefuncs import (mean_variance_axis,
incr_mean_variance_axis,
inplace_column_scale,
inplace_row_scale,
inplace_swap_row, inplace_swap_column,
min_max_axis,
count_nonzero, csc_median_axis_0)
from sklearn.utils.sparsefuncs_fast import (assign_rows_csr,
inplace_csr_row_normalize_l1,
inplace_csr_row_normalize_l2)
from sklearn.utils._testing import assert_raises
from sklearn.utils._testing import assert_allclose
def test_mean_variance_axis0():
X, _ = make_classification(5, 4, random_state=0)
# Sparsify the array a little bit
X[0, 0] = 0
X[2, 1] = 0
X[4, 3] = 0
X_lil = sp.lil_matrix(X)
X_lil[1, 0] = 0
X[1, 0] = 0
assert_raises(TypeError, mean_variance_axis, X_lil, axis=0)
X_csr = sp.csr_matrix(X_lil)
X_csc = sp.csc_matrix(X_lil)
expected_dtypes = [(np.float32, np.float32),
(np.float64, np.float64),
(np.int32, np.float64),
(np.int64, np.float64)]
for input_dtype, output_dtype in expected_dtypes:
X_test = X.astype(input_dtype)
for X_sparse in (X_csr, X_csc):
X_sparse = X_sparse.astype(input_dtype)
X_means, X_vars = mean_variance_axis(X_sparse, axis=0)
assert X_means.dtype == output_dtype
assert X_vars.dtype == output_dtype
assert_array_almost_equal(X_means, np.mean(X_test, axis=0))
assert_array_almost_equal(X_vars, np.var(X_test, axis=0))
def test_mean_variance_axis1():
X, _ = make_classification(5, 4, random_state=0)
# Sparsify the array a little bit
X[0, 0] = 0
X[2, 1] = 0
X[4, 3] = 0
X_lil = sp.lil_matrix(X)
X_lil[1, 0] = 0
X[1, 0] = 0
assert_raises(TypeError, mean_variance_axis, X_lil, axis=1)
X_csr = sp.csr_matrix(X_lil)
X_csc = sp.csc_matrix(X_lil)
expected_dtypes = [(np.float32, np.float32),
(np.float64, np.float64),
(np.int32, np.float64),
(np.int64, np.float64)]
for input_dtype, output_dtype in expected_dtypes:
X_test = X.astype(input_dtype)
for X_sparse in (X_csr, X_csc):
X_sparse = X_sparse.astype(input_dtype)
X_means, X_vars = mean_variance_axis(X_sparse, axis=0)
assert X_means.dtype == output_dtype
assert X_vars.dtype == output_dtype
assert_array_almost_equal(X_means, np.mean(X_test, axis=0))
assert_array_almost_equal(X_vars, np.var(X_test, axis=0))
def test_incr_mean_variance_axis():
for axis in [0, 1]:
rng = np.random.RandomState(0)
n_features = 50
n_samples = 10
data_chunks = [rng.randint(0, 2, size=n_features)
for i in range(n_samples)]
# default params for incr_mean_variance
last_mean = np.zeros(n_features)
last_var = np.zeros_like(last_mean)
last_n = np.zeros_like(last_mean, dtype=np.int64)
# Test errors
X = np.array(data_chunks[0])
X = np.atleast_2d(X)
X_lil = sp.lil_matrix(X)
X_csr = sp.csr_matrix(X_lil)
assert_raises(TypeError, incr_mean_variance_axis, axis,
last_mean, last_var, last_n)
assert_raises(TypeError, incr_mean_variance_axis, axis,
last_mean, last_var, last_n)
assert_raises(TypeError, incr_mean_variance_axis, X_lil, axis,
last_mean, last_var, last_n)
# Test _incr_mean_and_var with a 1 row input
X_means, X_vars = mean_variance_axis(X_csr, axis)
X_means_incr, X_vars_incr, n_incr = \
incr_mean_variance_axis(X_csr, axis, last_mean, last_var, last_n)
assert_array_almost_equal(X_means, X_means_incr)
assert_array_almost_equal(X_vars, X_vars_incr)
# X.shape[axis] picks # samples
assert_array_equal(X.shape[axis], n_incr)
X_csc = sp.csc_matrix(X_lil)
X_means, X_vars = mean_variance_axis(X_csc, axis)
assert_array_almost_equal(X_means, X_means_incr)
assert_array_almost_equal(X_vars, X_vars_incr)
assert_array_equal(X.shape[axis], n_incr)
# Test _incremental_mean_and_var with whole data
X = np.vstack(data_chunks)
X_lil = sp.lil_matrix(X)
X_csr = sp.csr_matrix(X_lil)
X_csc = sp.csc_matrix(X_lil)
expected_dtypes = [(np.float32, np.float32),
(np.float64, np.float64),
(np.int32, np.float64),
(np.int64, np.float64)]
for input_dtype, output_dtype in expected_dtypes:
for X_sparse in (X_csr, X_csc):
X_sparse = X_sparse.astype(input_dtype)
last_mean = last_mean.astype(output_dtype)
last_var = last_var.astype(output_dtype)
X_means, X_vars = mean_variance_axis(X_sparse, axis)
X_means_incr, X_vars_incr, n_incr = \
incr_mean_variance_axis(X_sparse, axis, last_mean,
last_var, last_n)
assert X_means_incr.dtype == output_dtype
assert X_vars_incr.dtype == output_dtype
assert_array_almost_equal(X_means, X_means_incr)
assert_array_almost_equal(X_vars, X_vars_incr)
assert_array_equal(X.shape[axis], n_incr)
@pytest.mark.parametrize("axis", [0, 1])
@pytest.mark.parametrize("sparse_constructor", [sp.csc_matrix, sp.csr_matrix])
def test_incr_mean_variance_axis_ignore_nan(axis, sparse_constructor):
old_means = np.array([535., 535., 535., 535.])
old_variances = np.array([4225., 4225., 4225., 4225.])
old_sample_count = np.array([2, 2, 2, 2], dtype=np.int64)
X = sparse_constructor(
np.array([[170, 170, 170, 170],
[430, 430, 430, 430],
[300, 300, 300, 300]]))
X_nan = sparse_constructor(
np.array([[170, np.nan, 170, 170],
[np.nan, 170, 430, 430],
[430, 430, np.nan, 300],
[300, 300, 300, np.nan]]))
# we avoid creating specific data for axis 0 and 1: translating the data is
# enough.
if axis:
X = X.T
X_nan = X_nan.T
# take a copy of the old statistics since they are modified in place.
X_means, X_vars, X_sample_count = incr_mean_variance_axis(
X, axis, old_means.copy(), old_variances.copy(),
old_sample_count.copy())
X_nan_means, X_nan_vars, X_nan_sample_count = incr_mean_variance_axis(
X_nan, axis, old_means.copy(), old_variances.copy(),
old_sample_count.copy())
assert_allclose(X_nan_means, X_means)
assert_allclose(X_nan_vars, X_vars)
assert_allclose(X_nan_sample_count, X_sample_count)
def test_mean_variance_illegal_axis():
X, _ = make_classification(5, 4, random_state=0)
# Sparsify the array a little bit
X[0, 0] = 0
X[2, 1] = 0
X[4, 3] = 0
X_csr = sp.csr_matrix(X)
assert_raises(ValueError, mean_variance_axis, X_csr, axis=-3)
assert_raises(ValueError, mean_variance_axis, X_csr, axis=2)
assert_raises(ValueError, mean_variance_axis, X_csr, axis=-1)
assert_raises(ValueError, incr_mean_variance_axis, X_csr, axis=-3,
last_mean=None, last_var=None, last_n=None)
assert_raises(ValueError, incr_mean_variance_axis, X_csr, axis=2,
last_mean=None, last_var=None, last_n=None)
assert_raises(ValueError, incr_mean_variance_axis, X_csr, axis=-1,
last_mean=None, last_var=None, last_n=None)
def test_densify_rows():
for dtype in (np.float32, np.float64):
X = sp.csr_matrix([[0, 3, 0],
[2, 4, 0],
[0, 0, 0],
[9, 8, 7],
[4, 0, 5]], dtype=dtype)
X_rows = np.array([0, 2, 3], dtype=np.intp)
out = np.ones((6, X.shape[1]), dtype=dtype)
out_rows = np.array([1, 3, 4], dtype=np.intp)
expect = np.ones_like(out)
expect[out_rows] = X[X_rows, :].toarray()
assign_rows_csr(X, X_rows, out_rows, out)
assert_array_equal(out, expect)
def test_inplace_column_scale():
rng = np.random.RandomState(0)
X = sp.rand(100, 200, 0.05)
Xr = X.tocsr()
Xc = X.tocsc()
XA = X.toarray()
scale = rng.rand(200)
XA *= scale
inplace_column_scale(Xc, scale)
inplace_column_scale(Xr, scale)
assert_array_almost_equal(Xr.toarray(), Xc.toarray())
assert_array_almost_equal(XA, Xc.toarray())
assert_array_almost_equal(XA, Xr.toarray())
assert_raises(TypeError, inplace_column_scale, X.tolil(), scale)
X = X.astype(np.float32)
scale = scale.astype(np.float32)
Xr = X.tocsr()
Xc = X.tocsc()
XA = X.toarray()
XA *= scale
inplace_column_scale(Xc, scale)
inplace_column_scale(Xr, scale)
assert_array_almost_equal(Xr.toarray(), Xc.toarray())
assert_array_almost_equal(XA, Xc.toarray())
assert_array_almost_equal(XA, Xr.toarray())
assert_raises(TypeError, inplace_column_scale, X.tolil(), scale)
def test_inplace_row_scale():
rng = np.random.RandomState(0)
X = sp.rand(100, 200, 0.05)
Xr = X.tocsr()
Xc = X.tocsc()
XA = X.toarray()
scale = rng.rand(100)
XA *= scale.reshape(-1, 1)
inplace_row_scale(Xc, scale)
inplace_row_scale(Xr, scale)
assert_array_almost_equal(Xr.toarray(), Xc.toarray())
assert_array_almost_equal(XA, Xc.toarray())
assert_array_almost_equal(XA, Xr.toarray())
assert_raises(TypeError, inplace_column_scale, X.tolil(), scale)
X = X.astype(np.float32)
scale = scale.astype(np.float32)
Xr = X.tocsr()
Xc = X.tocsc()
XA = X.toarray()
XA *= scale.reshape(-1, 1)
inplace_row_scale(Xc, scale)
inplace_row_scale(Xr, scale)
assert_array_almost_equal(Xr.toarray(), Xc.toarray())
assert_array_almost_equal(XA, Xc.toarray())
assert_array_almost_equal(XA, Xr.toarray())
assert_raises(TypeError, inplace_column_scale, X.tolil(), scale)
def test_inplace_swap_row():
X = np.array([[0, 3, 0],
[2, 4, 0],
[0, 0, 0],
[9, 8, 7],
[4, 0, 5]], dtype=np.float64)
X_csr = sp.csr_matrix(X)
X_csc = sp.csc_matrix(X)
swap = linalg.get_blas_funcs(('swap',), (X,))
swap = swap[0]
X[0], X[-1] = swap(X[0], X[-1])
inplace_swap_row(X_csr, 0, -1)
inplace_swap_row(X_csc, 0, -1)
assert_array_equal(X_csr.toarray(), X_csc.toarray())
assert_array_equal(X, X_csc.toarray())
assert_array_equal(X, X_csr.toarray())
X[2], X[3] = swap(X[2], X[3])
inplace_swap_row(X_csr, 2, 3)
inplace_swap_row(X_csc, 2, 3)
assert_array_equal(X_csr.toarray(), X_csc.toarray())
assert_array_equal(X, X_csc.toarray())
assert_array_equal(X, X_csr.toarray())
assert_raises(TypeError, inplace_swap_row, X_csr.tolil())
X = np.array([[0, 3, 0],
[2, 4, 0],
[0, 0, 0],
[9, 8, 7],
[4, 0, 5]], dtype=np.float32)
X_csr = sp.csr_matrix(X)
X_csc = sp.csc_matrix(X)
swap = linalg.get_blas_funcs(('swap',), (X,))
swap = swap[0]
X[0], X[-1] = swap(X[0], X[-1])
inplace_swap_row(X_csr, 0, -1)
inplace_swap_row(X_csc, 0, -1)
assert_array_equal(X_csr.toarray(), X_csc.toarray())
assert_array_equal(X, X_csc.toarray())
assert_array_equal(X, X_csr.toarray())
X[2], X[3] = swap(X[2], X[3])
inplace_swap_row(X_csr, 2, 3)
inplace_swap_row(X_csc, 2, 3)
assert_array_equal(X_csr.toarray(), X_csc.toarray())
assert_array_equal(X, X_csc.toarray())
assert_array_equal(X, X_csr.toarray())
assert_raises(TypeError, inplace_swap_row, X_csr.tolil())
def test_inplace_swap_column():
X = np.array([[0, 3, 0],
[2, 4, 0],
[0, 0, 0],
[9, 8, 7],
[4, 0, 5]], dtype=np.float64)
X_csr = sp.csr_matrix(X)
X_csc = sp.csc_matrix(X)
swap = linalg.get_blas_funcs(('swap',), (X,))
swap = swap[0]
X[:, 0], X[:, -1] = swap(X[:, 0], X[:, -1])
inplace_swap_column(X_csr, 0, -1)
inplace_swap_column(X_csc, 0, -1)
assert_array_equal(X_csr.toarray(), X_csc.toarray())
assert_array_equal(X, X_csc.toarray())
assert_array_equal(X, X_csr.toarray())
X[:, 0], X[:, 1] = swap(X[:, 0], X[:, 1])
inplace_swap_column(X_csr, 0, 1)
inplace_swap_column(X_csc, 0, 1)
assert_array_equal(X_csr.toarray(), X_csc.toarray())
assert_array_equal(X, X_csc.toarray())
assert_array_equal(X, X_csr.toarray())
assert_raises(TypeError, inplace_swap_column, X_csr.tolil())
X = np.array([[0, 3, 0],
[2, 4, 0],
[0, 0, 0],
[9, 8, 7],
[4, 0, 5]], dtype=np.float32)
X_csr = sp.csr_matrix(X)
X_csc = sp.csc_matrix(X)
swap = linalg.get_blas_funcs(('swap',), (X,))
swap = swap[0]
X[:, 0], X[:, -1] = swap(X[:, 0], X[:, -1])
inplace_swap_column(X_csr, 0, -1)
inplace_swap_column(X_csc, 0, -1)
assert_array_equal(X_csr.toarray(), X_csc.toarray())
assert_array_equal(X, X_csc.toarray())
assert_array_equal(X, X_csr.toarray())
X[:, 0], X[:, 1] = swap(X[:, 0], X[:, 1])
inplace_swap_column(X_csr, 0, 1)
inplace_swap_column(X_csc, 0, 1)
assert_array_equal(X_csr.toarray(), X_csc.toarray())
assert_array_equal(X, X_csc.toarray())
assert_array_equal(X, X_csr.toarray())
assert_raises(TypeError, inplace_swap_column, X_csr.tolil())
@pytest.mark.parametrize("dtype", [np.float32, np.float64])
@pytest.mark.parametrize("axis", [0, 1, None])
@pytest.mark.parametrize("sparse_format", [sp.csr_matrix, sp.csc_matrix])
@pytest.mark.parametrize(
"missing_values, min_func, max_func, ignore_nan",
[(0, np.min, np.max, False),
(np.nan, np.nanmin, np.nanmax, True)]
)
@pytest.mark.parametrize("large_indices", [True, False])
def test_min_max(dtype, axis, sparse_format, missing_values, min_func,
max_func, ignore_nan, large_indices):
X = np.array([[0, 3, 0],
[2, -1, missing_values],
[0, 0, 0],
[9, missing_values, 7],
[4, 0, 5]], dtype=dtype)
X_sparse = sparse_format(X)
if large_indices:
X_sparse.indices = X_sparse.indices.astype('int64')
X_sparse.indptr = X_sparse.indptr.astype('int64')
mins_sparse, maxs_sparse = min_max_axis(X_sparse, axis=axis,
ignore_nan=ignore_nan)
assert_array_equal(mins_sparse, min_func(X, axis=axis))
assert_array_equal(maxs_sparse, max_func(X, axis=axis))
def test_min_max_axis_errors():
X = np.array([[0, 3, 0],
[2, -1, 0],
[0, 0, 0],
[9, 8, 7],
[4, 0, 5]], dtype=np.float64)
X_csr = sp.csr_matrix(X)
X_csc = sp.csc_matrix(X)
assert_raises(TypeError, min_max_axis, X_csr.tolil(), axis=0)
assert_raises(ValueError, min_max_axis, X_csr, axis=2)
assert_raises(ValueError, min_max_axis, X_csc, axis=-3)
def test_count_nonzero():
X = np.array([[0, 3, 0],
[2, -1, 0],
[0, 0, 0],
[9, 8, 7],
[4, 0, 5]], dtype=np.float64)
X_csr = sp.csr_matrix(X)
X_csc = sp.csc_matrix(X)
X_nonzero = X != 0
sample_weight = [.5, .2, .3, .1, .1]
X_nonzero_weighted = X_nonzero * np.array(sample_weight)[:, None]
for axis in [0, 1, -1, -2, None]:
assert_array_almost_equal(count_nonzero(X_csr, axis=axis),
X_nonzero.sum(axis=axis))
assert_array_almost_equal(count_nonzero(X_csr, axis=axis,
sample_weight=sample_weight),
X_nonzero_weighted.sum(axis=axis))
assert_raises(TypeError, count_nonzero, X_csc)
assert_raises(ValueError, count_nonzero, X_csr, axis=2)
assert (count_nonzero(X_csr, axis=0).dtype ==
count_nonzero(X_csr, axis=1).dtype)
assert (count_nonzero(X_csr, axis=0, sample_weight=sample_weight).dtype ==
count_nonzero(X_csr, axis=1, sample_weight=sample_weight).dtype)
# Check dtypes with large sparse matrices too
# XXX: test fails on Appveyor (python3.5 32bit)
try:
X_csr.indices = X_csr.indices.astype(np.int64)
X_csr.indptr = X_csr.indptr.astype(np.int64)
assert (count_nonzero(X_csr, axis=0).dtype ==
count_nonzero(X_csr, axis=1).dtype)
assert (count_nonzero(X_csr, axis=0,
sample_weight=sample_weight).dtype ==
count_nonzero(X_csr, axis=1,
sample_weight=sample_weight).dtype)
except TypeError as e:
if ("according to the rule 'safe'" in e.args[0] and
np.intp().nbytes < 8):
pass
else:
raise
def test_csc_row_median():
# Test csc_row_median actually calculates the median.
# Test that it gives the same output when X is dense.
rng = np.random.RandomState(0)
X = rng.rand(100, 50)
dense_median = np.median(X, axis=0)
csc = sp.csc_matrix(X)
sparse_median = csc_median_axis_0(csc)
assert_array_equal(sparse_median, dense_median)
# Test that it gives the same output when X is sparse
X = rng.rand(51, 100)
X[X < 0.7] = 0.0
ind = rng.randint(0, 50, 10)
X[ind] = -X[ind]
csc = sp.csc_matrix(X)
dense_median = np.median(X, axis=0)
sparse_median = csc_median_axis_0(csc)
assert_array_equal(sparse_median, dense_median)
# Test for toy data.
X = [[0, -2], [-1, -1], [1, 0], [2, 1]]
csc = sp.csc_matrix(X)
assert_array_equal(csc_median_axis_0(csc), np.array([0.5, -0.5]))
X = [[0, -2], [-1, -5], [1, -3]]
csc = sp.csc_matrix(X)
assert_array_equal(csc_median_axis_0(csc), np.array([0., -3]))
# Test that it raises an Error for non-csc matrices.
assert_raises(TypeError, csc_median_axis_0, sp.csr_matrix(X))
def test_inplace_normalize():
ones = np.ones((10, 1))
rs = RandomState(10)
for inplace_csr_row_normalize in (inplace_csr_row_normalize_l1,
inplace_csr_row_normalize_l2):
for dtype in (np.float64, np.float32):
X = rs.randn(10, 5).astype(dtype)
X_csr = sp.csr_matrix(X)
for index_dtype in [np.int32, np.int64]:
# csr_matrix will use int32 indices by default,
# up-casting those to int64 when necessary
if index_dtype is np.int64:
X_csr.indptr = X_csr.indptr.astype(index_dtype)
X_csr.indices = X_csr.indices.astype(index_dtype)
assert X_csr.indices.dtype == index_dtype
assert X_csr.indptr.dtype == index_dtype
inplace_csr_row_normalize(X_csr)
assert X_csr.dtype == dtype
if inplace_csr_row_normalize is inplace_csr_row_normalize_l2:
X_csr.data **= 2
assert_array_almost_equal(np.abs(X_csr).sum(axis=1), ones)