def test_train_with_validation_check_recorded(self):
        arch = MagicMock()
        arch.update_params.return_value = (0.1, None)
        arch.check_cost.return_value = (0.66, None)
        model = Model(arch)
        trainer = SimpleTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 90.5
        train_watcher = _TrainWatcherRecorder()

        model.train(
            None,
            None,
            None,
            None,
            trainer,
            measurer,
            train_watcher,
            epochs=9,
            validation_gap=3,
        )

        self.assertEqual(train_watcher.epochs, list(range(9)))
        self.assertEqual(train_watcher.costs, [0.1] * 9)
        self.assertEqual(train_watcher.accuracies, [90.5] * 9)
        self.assertEqual(train_watcher.validation_epochs, [0, 3, 6])
        self.assertEqual(train_watcher.validation_costs, [0.66] * 3)
        self.assertEqual(train_watcher.validation_accuracies, [90.5] * 3)
    def test_train_having_decreasing_cost_instance_check_it_does_not_stops_early(
            self):
        arch = _PlaybackArch(
            [0.05] * 3,
            [None] * 3,
            [0.1, 0.01, 0.001],
            [None] * 3,
        )
        model = Model(arch)
        measurer = MagicMock()
        measurer.measure.return_value = 30.1
        train_watcher = _TrainWatcherRecorder()

        model.train(
            None,
            None,
            None,
            None,
            EarlyStopTrainer(),
            measurer,
            train_watcher,
            epochs=3,
            validation_gap=1,
            patience=1,
        )

        self.assertEqual(train_watcher.epochs, list(range(3)))
        self.assertEqual(train_watcher.costs, [0.05] * 3)
        self.assertEqual(train_watcher.accuracies, [30.1] * 3)
        self.assertEqual(train_watcher.validation_epochs, list(range(3)))
        self.assertEqual(train_watcher.validation_costs, [0.1, 0.01, 0.001])
        self.assertEqual(train_watcher.validation_accuracies, [30.1] * 3)

        self.assertEqual(arch.update_params_call_count, 3)
        self.assertEqual(arch.check_cost_call_count, 3)
    def test_train_with_measurer_check_accuracies(self):
        arch = _PlaybackArch(
            [0.05] * 9,
            [np.array([[0, 1], [1, 0], [0, 1]])] * 9,
            [0.1, 0.01, 0.001],
            [np.array([[1, 0], [1, 0]])] * 3,
        )
        model = Model(arch)
        train_watcher = _TrainWatcherRecorder()

        model.train(
            np.array([[1], [2], [3]]),
            np.array([[0, 1], [0, 1], [0, 1]]),
            np.array([[1], [2]]),
            np.array([[0, 1], [0, 1]]),
            SgdEarlyStopTrainer(),
            ProbsMeasurer(),
            train_watcher,
            epochs=3,
            validation_gap=1,
            minibatch_size=1,
            patience=1,
            seed=0,
        )

        self.assertEqual(train_watcher.epochs, list(range(3)))
        self.assertEqual(train_watcher.costs, [0.05] * 3)
        self.assertEqual(train_watcher.accuracies, [2 / 3] * 3)
        self.assertEqual(train_watcher.validation_epochs, list(range(3)))
        self.assertEqual(train_watcher.validation_costs, [0.1, 0.01, 0.001])
        self.assertEqual(train_watcher.validation_accuracies, [0] * 3)
Exemplo n.º 4
0
    def test_train_with_minibatches_check_recorded(self):
        arch = MagicMock()
        arch.update_params.return_value = (0.1, None)
        arch.check_cost.return_value = (0.66, None)
        model = Model(arch)
        trainer = SgdTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 90.5
        train_watcher = _TrainWatcherRecorder()

        model.train(
            np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 0, 1, 2]),
            np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 0, 1, 2]),
            np.array([None]),
            np.array([None]),
            trainer,
            measurer,
            train_watcher,
            epochs=9,
            validation_gap=3,
            minibatch_size=3,
        )

        self.assertEqual(train_watcher.epochs, list(range(9)))
        self.assertEqual(train_watcher.costs, [0.1] * 9)
        self.assertEqual(train_watcher.accuracies, [90.5] * 9)
        self.assertEqual(train_watcher.validation_epochs, [0, 3, 6])
        self.assertEqual(train_watcher.validation_costs, [0.66] * 3)
        self.assertEqual(train_watcher.validation_accuracies, [90.5] * 3)
    def test_train_check_recorded(self):
        arch = MagicMock()
        arch.update_params.return_value = (0.4, None)
        model = Model(arch)
        trainer = SimpleTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 60.5
        train_watcher = _TrainWatcherRecorder()

        model.train(
            None,
            None,
            None,
            None,
            trainer,
            measurer,
            train_watcher,
            epochs=8,
        )

        self.assertEqual(train_watcher.epochs, list(range(8)))
        self.assertEqual(train_watcher.costs, [0.4] * 8)
        self.assertEqual(train_watcher.accuracies, [60.5] * 8)
        self.assertEqual(train_watcher.validation_epochs, [])
        self.assertEqual(train_watcher.validation_costs, [])
        self.assertEqual(train_watcher.validation_accuracies, [])
    def test_train_check_returned(self):
        arch = MagicMock()
        arch.update_params.return_value = (0.4, None)
        model = Model(arch)
        trainer = SimpleTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 60.5

        (
            epochs,
            costs,
            accuracies,
            validation_epochs,
            validation_costs,
            validation_accuracies,
        ) = model.train(
            None,
            None,
            None,
            None,
            trainer,
            measurer,
            None,
            epochs=8,
        )

        self.assertEqual(epochs, 8)
        self.assertEqual(costs, [0.4] * 8)
        self.assertEqual(accuracies, [60.5] * 8)
        self.assertEqual(validation_epochs, 0)
        self.assertEqual(validation_costs, [])
        self.assertEqual(validation_accuracies, [])
    def test_train_with_measurer_check_accuracies(self):
        arch = MagicMock()
        arch.update_params.return_value = (
            None,
            np.array([
                [1, 0, -3],
                [3, 22, 0],
                [1, 2, 0.5],
            ]),
        )
        model = Model(arch)
        trainer = SimpleTrainer()

        _, _, accuracies, *_ = model.train(
            None,
            np.array([
                [6, 3, 0],
                [1, 0.5, 8],
                [10, -100, 9.5],
            ]),
            None,
            None,
            trainer,
            ProbsMeasurer(),
            None,
            epochs=7,
        )

        self.assertEqual(accuracies, [1 / 3] * 7)
    def test_train_with_validation_check_returned(self):
        arch = MagicMock()
        arch.update_params.return_value = (16.7, None)
        arch.check_cost.return_value = (24.6, None)
        model = Model(arch)
        trainer = SimpleTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 33.8

        (
            epochs,
            costs,
            accuracies,
            validation_epochs,
            validation_costs,
            validation_accuracies,
        ) = model.train(
            None,
            None,
            None,
            None,
            trainer,
            measurer,
            None,
            epochs=13,
            validation_gap=4,
        )

        self.assertEqual(epochs, 13)
        self.assertEqual(costs, [16.7] * 13)
        self.assertEqual(accuracies, [33.8] * 13)
        self.assertEqual(validation_epochs, 4)
        self.assertEqual(validation_costs, [24.6] * 4)
        self.assertEqual(validation_accuracies, [33.8] * 4)
Exemplo n.º 9
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    def test_train_with_minibatches_check_returned(self):
        arch = MagicMock()
        arch.update_params.return_value = (16.7, None)
        arch.check_cost.return_value = (24.6, None)
        model = Model(arch)
        trainer = SgdTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 33.8

        (
            epochs,
            costs,
            accuracies,
            validation_epochs,
            validation_costs,
            validation_accuracies,
        ) = model.train(
            np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 0, 1, 2, 3]),
            np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 0, 1, 2, 3]),
            np.array([None]),
            np.array([None]),
            trainer,
            measurer,
            None,
            epochs=13,
            validation_gap=4,
            minibatch_size=6,
        )

        self.assertEqual(epochs, 13)
        self.assertEqual(costs, [16.7] * 13)
        self.assertEqual(accuracies, [33.8] * 13)
        self.assertEqual(validation_epochs, 4)
        self.assertEqual(validation_costs, [24.6] * 4)
        self.assertEqual(validation_accuracies, [33.8] * 4)
    def test_train_check_returned(self):
        arch = MagicMock()
        arch.update_params.return_value = (0.4, None)
        arch.check_cost.return_value = (0.66, None)
        model = Model(arch)
        trainer = EarlyStopTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 60.5

        (
            epochs,
            costs,
            accuracies,
            validation_epochs,
            validation_costs,
            validation_accuracies,
        ) = model.train(
            None,
            None,
            None,
            None,
            trainer,
            measurer,
            None,
            epochs=8,
            validation_gap=1,
            patience=2,
        )

        self.assertEqual(epochs, 3)
        self.assertEqual(costs, [0.4] * 3)
        self.assertEqual(accuracies, [60.5] * 3)
        self.assertEqual(validation_epochs, 3)
        self.assertEqual(validation_costs, [0.66] * 3)
        self.assertEqual(validation_accuracies, [60.5] * 3)
    def test_train_with_simple_trainer_check_recorded_accuracies(self):
        arch = MagicMock()
        arch.update_params.return_value = (
            None,
            np.array([
                [1, 0, -3],
                [3, 22, 0],
                [1, 2, 0.5],
            ]),
        )
        arch.check_cost.return_value = (
            None,
            np.array([
                [10, 1, -9],
                [-0.01, -0.8, -0.5],
                [11, 20, 0.5],
            ]),
        )
        model = Model(arch)
        trainer = SimpleTrainer()
        recorder = _TrainWatcherRecorder()

        model.train(
            None,
            np.array([
                [6, 3, 0],
                [1, 0.5, 8],
                [10, -100, 9.5],
            ]),
            None,
            np.array([
                [11, 1, -9],
                [-0.02, -0.8, -0.5],
                [11, 21, 0.5],
            ]),
            trainer,
            ProbsMeasurer(),
            recorder,
            epochs=7,
            validation_gap=1,
        )

        self.assertEqual(recorder.accuracies, [1 / 3] * 7)
        self.assertEqual(recorder.validation_accuracies, [1] * 7)
Exemplo n.º 12
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    def test_train_assert_hooks_are_called(self):
        arch = MagicMock()
        model = Model(arch)
        trainer = MagicMock()
        trainer.train.return_value = (None, None)

        model.train(
            None,
            None,
            None,
            None,
            trainer,
            None,
            None,
            epochs=0,
        )

        self.assertEqual(arch.train_initialize.call_count, 1)
        self.assertEqual(arch.train_finalize.call_count, 1)
Exemplo n.º 13
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    def test_train_with_minibatches_and_measurer_check_accuracies(self):
        arch = MagicMock()
        arch.update_params.return_value = (
            0.0,
            np.array([
                [11, 0.8, 33.1],
                [20, 21.4, 7.6],
            ]),
        )
        arch.check_cost.return_value = (0.0,
                                        np.array([
                                            [0.2, 0.1, 0],
                                            [0.8, 0.9, 0.2],
                                            [0.0, 2.1, 0.1],
                                            [20, 21.4, 7.6],
                                        ]))
        model = Model(arch)
        trainer = SgdTrainer()

        _, _, accuracies, _, _, validation_accuracies = model.train(
            np.array([None, None, None, None]),
            np.array([
                [16, 0.67, 9],
                [0.3, 0.7, 0.1],
                [0.3, -34, 1],
                [20, 21.4, 7.6],
            ]),
            np.array([]),
            np.array([
                [20, 21.4, 7.6],
                [56, 3, 0],
                [22, 111, 0.2],
                [0.4, 0.1, 0.6],
            ]),
            trainer,
            ProbsMeasurer(),
            None,
            epochs=4,
            validation_gap=1,
            minibatch_size=2,
            seed=0,
        )

        # Remember: Dataset and labels get shuffled, permutation indices:
        # epoch 0: [2, 3, 1, 0]
        # epoch 1: [0, 2, 1, 3]
        # epoch 2: [3, 0, 2, 1]
        # epoch 2: [1, 0, 2, 3]
        self.assertEqual(accuracies, [1 / 2, 1 / 4, 0.5, 0.5])
        self.assertEqual(validation_accuracies, [1 / 4] * 4)
    def test_train_assert_recorded_and_returned_are_identical(self):
        arch = MagicMock()
        arch.update_params.return_value = (0.1, None)
        arch.check_cost.return_value = (0.66, None)
        model = Model(arch)
        trainer = SgdEarlyStopTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 90.5
        train_watcher = _TrainWatcherRecorder()

        (
            epochs,
            costs,
            accuracies,
            validation_epochs,
            validation_costs,
            validation_accuracies,
        ) = model.train(
            np.array([1, 2, 3]),
            np.array([1, 0, 0]),
            None,
            None,
            trainer,
            measurer,
            train_watcher,
            epochs=9,
            validation_gap=2,
            minibatch_size=2,
            patience=1,
        )

        self.assertEqual(epochs, 3)
        self.assertEqual(train_watcher.epochs, list(range(epochs)))
        self.assertEqual(train_watcher.costs, costs)
        self.assertEqual(train_watcher.accuracies, accuracies)
        self.assertEqual(len(train_watcher.validation_epochs),
                         validation_epochs)
        self.assertEqual(train_watcher.validation_costs, validation_costs)
        self.assertEqual(train_watcher.validation_accuracies,
                         validation_accuracies)

        self.assertEqual(arch.update_params.call_count, 6)
        self.assertEqual(arch.check_cost.call_count, 2)
    def test_train_check_returned_and_call_count(self):
        arch = MagicMock()
        arch.update_params.return_value = (0.4, None)
        arch.check_cost.return_value = (0.66, None)
        model = Model(arch)
        trainer = SgdEarlyStopTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 60.5

        (
            epochs,
            costs,
            accuracies,
            validation_epochs,
            validation_costs,
            validation_accuracies,
        ) = model.train(
            np.array([1, 2, 3]),
            np.array([0, 1, 0]),
            None,
            None,
            trainer,
            measurer,
            None,
            epochs=8,
            validation_gap=1,
            minibatch_size=1,
            patience=2,
        )

        self.assertEqual(epochs, 3)
        self.assertEqual(costs, [0.4] * 3)
        self.assertEqual(accuracies, [60.5] * 3)
        self.assertEqual(validation_epochs, 3)
        self.assertEqual(validation_costs, [0.66] * 3)
        self.assertEqual(validation_accuracies, [60.5] * 3)

        self.assertEqual(arch.update_params.call_count, 9)
        self.assertEqual(arch.check_cost.call_count, 3)
    def test_train_with_validation_and_measurer_check_accuracies(self):
        arch = MagicMock()
        arch.update_params.return_value = (
            None,
            np.array([
                [-1, 8, 7],
                [-1, 1, 0],
            ]),
        )
        arch.check_cost.return_value = (
            None,
            np.array([
                [8, 0, 7],
                [-6, 1, 0],
            ]),
        )
        model = Model(arch)
        trainer = SimpleTrainer()

        _, _, accuracies, _, _, validation_accuracies = model.train(
            None,
            np.array([
                [62.9, 63, 0.0],
                [11, 0.5, 0.8],
            ]),
            None,
            np.array([
                [0, 1, 11.0],
                [-8, 0, 6.66],
            ]),
            trainer,
            ProbsMeasurer(),
            None,
            epochs=8,
            validation_gap=4,
        )

        self.assertEqual(accuracies, [1 / 2] * 8)
        self.assertEqual(validation_accuracies, [0] * 2)
Exemplo n.º 17
0
    def test_train_with_minibathes_assert_recorded_and_returned_are_identical(
            self):
        arch = MagicMock()
        arch.update_params.return_value = (0.1, None)
        arch.check_cost.return_value = (0.66, None)
        model = Model(arch)
        trainer = SgdTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 90.5
        train_watcher = _TrainWatcherRecorder()

        (
            epochs,
            costs,
            accuracies,
            validation_epochs,
            validation_costs,
            validation_accuracies,
        ) = model.train(
            np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 0]),
            np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 0]),
            np.array([None]),
            np.array([None]),
            trainer,
            measurer,
            train_watcher,
            epochs=11,
            validation_gap=1,
            minibatch_size=4,
        )

        self.assertEqual(train_watcher.epochs, list(range(epochs)))
        self.assertEqual(train_watcher.costs, costs)
        self.assertEqual(train_watcher.accuracies, accuracies)
        self.assertEqual(len(train_watcher.validation_epochs),
                         validation_epochs)
        self.assertEqual(train_watcher.validation_costs, validation_costs)
        self.assertEqual(train_watcher.validation_accuracies,
                         validation_accuracies)
    def test_train_assert_recorded_and_returned_are_identical(self):
        arch = MagicMock()
        arch.update_params.return_value = (0.1, None)
        arch.check_cost.return_value = (0.66, None)
        model = Model(arch)
        trainer = SimpleTrainer()
        measurer = MagicMock()
        measurer.measure.return_value = 90.5
        train_watcher = _TrainWatcherRecorder()

        (
            epochs,
            costs,
            accuracies,
            validation_epochs,
            validation_costs,
            validation_accuracies,
        ) = model.train(
            None,
            None,
            None,
            None,
            trainer,
            measurer,
            train_watcher,
            epochs=9,
            validation_gap=3,
        )

        self.assertEqual(train_watcher.epochs, list(range(epochs)))
        self.assertEqual(train_watcher.costs, costs)
        self.assertEqual(train_watcher.accuracies, accuracies)
        self.assertEqual(len(train_watcher.validation_epochs),
                         validation_epochs)
        self.assertEqual(train_watcher.validation_costs, validation_costs)
        self.assertEqual(train_watcher.validation_accuracies,
                         validation_accuracies)
Exemplo n.º 19
0
    def test_train_with_measurer_check_accuracies(self):
        arch = MagicMock()
        arch.update_params.return_value = (
            0.0,
            np.array([
                [10, 7.8, -3.1],
                [2.4, 60, 0.6],
                [11, 9.2, 45.3],
            ]),
        )
        model = Model(arch)
        trainer = SgdTrainer()

        _, _, accuracies, *_ = model.train(
            np.array([None, None, None]),
            np.array([
                [11, 6.4, 0.77],
                [99.9, 99.3, 44.5],
                [10, 1.2, 19.5],
            ]),
            None,
            None,
            trainer,
            ProbsMeasurer(),
            None,
            epochs=5,
            seed=0,
        )

        # Remember: Dataset and labels get shuffled, permutation indices:
        # epoch 0: [2, 1, 0]
        # epoch 1: [2, 0, 1]
        # epoch 2: [0, 2, 1]
        # epoch 3: [2, 0, 1]
        # epoch 4: [2, 1, 0]
        self.assertEqual(accuracies, [0, 0, 1 / 3, 0, 0])
Exemplo n.º 20
0
        error = labels - evaluations
        delta = error * (evaluations * (1 - evaluations))
        self._weights += np.sum(self._learning_rate * delta *
                                np.transpose(dataset),
                                axis=1)
        self._bias += np.sum(self._learning_rate * delta)
        return (np.average(error), evaluations)

    def evaluate(self, dataset):
        return sigmoid(np.sum(dataset * self._weights, axis=1) + self._bias)


model = Model(SigmoidPerceptron(2))

epochs, costs, accuracies, *_ = model.train(
    np.array([[0, 0], [0, 1], [1, 0], [1, 1]]),
    np.array([0, 0, 0, 1]),
    None,
    None,
    SimpleTrainer(),
    ThresholdMeasurer(0.5),
    None,
    epochs=35,
)

print('Epochs:     ', epochs)
print('Costs:      ', costs)
print('Accuracies: ', accuracies)
print('Predictions:', model.evaluate(np.array([[0, 0], [0, 1], [1, 0], [1,
                                                                        1]])))
Exemplo n.º 21
0
        evaluations = self.evaluate(dataset)
        error = labels - evaluations
        self._weights += np.sum(self._learning_rate * error *
                                np.transpose(dataset),
                                axis=1)
        return (np.average(error), evaluations)

    def evaluate(self, dataset):
        sum_ = np.sum(dataset * self._weights, axis=1)
        return (sum_ > self._threshold).astype(int)


model = Model(Perceptron(2))

epochs, costs, accuracies, *_ = model.train(
    np.array([[0, 0], [0, 1], [1, 0], [1, 1]]),
    np.array([0, 0, 0, 1]),
    None,
    None,
    SimpleTrainer(),
    PairwiseMeasurer(),
    None,
    epochs=10,
)

print('Epochs:     ', epochs)
print('Costs:      ', costs)
print('Accuracies: ', accuracies)
print('Predictions:', model.evaluate(np.array([[0, 0], [0, 1], [1, 0], [1,
                                                                        1]])))