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mindspore/tests/ut/python/nn/distribution/test_bernoulli.py

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# Copyright 2020 Huawei Technologies Co., Ltd
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ============================================================================
"""
Test nn.probability.distribution.Bernoulli.
"""
import pytest
import mindspore.nn as nn
import mindspore.nn.probability.distribution as msd
from mindspore import dtype
from mindspore import Tensor
def test_arguments():
"""
Args passing during initialization.
"""
b = msd.Bernoulli()
assert isinstance(b, msd.Distribution)
b = msd.Bernoulli([0.0, 0.3, 0.5, 1.0], dtype=dtype.int32)
assert isinstance(b, msd.Distribution)
def test_prob():
"""
Invalid probability.
"""
with pytest.raises(ValueError):
msd.Bernoulli([-0.1], dtype=dtype.int32)
with pytest.raises(ValueError):
msd.Bernoulli([1.1], dtype=dtype.int32)
class BernoulliProb(nn.Cell):
"""
Bernoulli distribution: initialize with probs.
"""
def __init__(self):
super(BernoulliProb, self).__init__()
self.b = msd.Bernoulli(0.5, dtype=dtype.int32)
def construct(self, value):
prob = self.b('prob', value)
log_prob = self.b('log_prob', value)
cdf = self.b('cdf', value)
log_cdf = self.b('log_cdf', value)
sf = self.b('survival_function', value)
log_sf = self.b('log_survival', value)
return prob + log_prob + cdf + log_cdf + sf + log_sf
def test_bernoulli_prob():
"""
Test probability functions: passing value through construct.
"""
net = BernoulliProb()
value = Tensor([0, 0, 0, 0, 0], dtype=dtype.float32)
ans = net(value)
assert isinstance(ans, Tensor)
class BernoulliProb1(nn.Cell):
"""
Bernoulli distribution: initialize without probs.
"""
def __init__(self):
super(BernoulliProb1, self).__init__()
self.b = msd.Bernoulli(dtype=dtype.int32)
def construct(self, value, probs):
prob = self.b('prob', value, probs)
log_prob = self.b('log_prob', value, probs)
cdf = self.b('cdf', value, probs)
log_cdf = self.b('log_cdf', value, probs)
sf = self.b('survival_function', value, probs)
log_sf = self.b('log_survival', value, probs)
return prob + log_prob + cdf + log_cdf + sf + log_sf
def test_bernoulli_prob1():
"""
Test probability functions: passing value/probs through construct.
"""
net = BernoulliProb1()
value = Tensor([0, 0, 0, 0, 0], dtype=dtype.float32)
probs = Tensor([0.5], dtype=dtype.float32)
ans = net(value, probs)
assert isinstance(ans, Tensor)
class BernoulliKl(nn.Cell):
"""
Test class: kl_loss between Bernoulli distributions.
"""
def __init__(self):
super(BernoulliKl, self).__init__()
self.b1 = msd.Bernoulli(0.7, dtype=dtype.int32)
self.b2 = msd.Bernoulli(dtype=dtype.int32)
def construct(self, probs_b, probs_a):
kl1 = self.b1('kl_loss', 'Bernoulli', probs_b)
kl2 = self.b2('kl_loss', 'Bernoulli', probs_b, probs_a)
return kl1 + kl2
def test_kl():
"""
Test kl_loss function.
"""
ber_net = BernoulliKl()
probs_b = Tensor([0.3], dtype=dtype.float32)
probs_a = Tensor([0.7], dtype=dtype.float32)
ans = ber_net(probs_b, probs_a)
assert isinstance(ans, Tensor)
class BernoulliCrossEntropy(nn.Cell):
"""
Test class: cross_entropy of Bernoulli distribution.
"""
def __init__(self):
super(BernoulliCrossEntropy, self).__init__()
self.b1 = msd.Bernoulli(0.7, dtype=dtype.int32)
self.b2 = msd.Bernoulli(dtype=dtype.int32)
def construct(self, probs_b, probs_a):
h1 = self.b1('cross_entropy', 'Bernoulli', probs_b)
h2 = self.b2('cross_entropy', 'Bernoulli', probs_b, probs_a)
return h1 + h2
def test_cross_entropy():
"""
Test cross_entropy between Bernoulli distributions.
"""
net = BernoulliCrossEntropy()
probs_b = Tensor([0.3], dtype=dtype.float32)
probs_a = Tensor([0.7], dtype=dtype.float32)
ans = net(probs_b, probs_a)
assert isinstance(ans, Tensor)
class BernoulliBasics(nn.Cell):
"""
Test class: basic mean/sd/var/mode/entropy function.
"""
def __init__(self):
super(BernoulliBasics, self).__init__()
self.b = msd.Bernoulli([0.3, 0.5], dtype=dtype.int32)
def construct(self):
mean = self.b('mean')
sd = self.b('sd')
var = self.b('var')
mode = self.b('mode')
entropy = self.b('entropy')
return mean + sd + var + mode + entropy
def test_bascis():
"""
Test mean/sd/var/mode/entropy functionality of Bernoulli distribution.
"""
net = BernoulliBasics()
ans = net()
assert isinstance(ans, Tensor)