TrainableModel#

class TrainableModel(neural_network, loss='squared_error', optimizer=None, warm_start=False, initial_point=None, callback=None)[kaynak]#

Bases: SerializableModelMixin

Base class for ML model that defines a scikit-learn like interface for Estimators.

Parametreler:
  • neural_network (NeuralNetwork) – An instance of an quantum neural network. If the neural network has a one-dimensional output, i.e., neural_network.output_shape=(1,), then it is expected to return values in [-1, +1] and it can only be used for binary classification. If the output is multi-dimensional, it is assumed that the result is a probability distribution, i.e., that the entries are non-negative and sum up to one. Then there are two options, either one-hot encoding or not. In case of one-hot encoding, each probability vector resulting a neural network is considered as one sample and the loss function is applied to the whole vector. Otherwise, each entry of the probability vector is considered as an individual sample and the loss function is applied to the index and weighted with the corresponding probability.

  • loss (str | Loss) – A target loss function to be used in training. Default is squared_error, i.e. L2 loss. Can be given either as a string for ‘absolute_error’ (i.e. L1 Loss), ‘squared_error’, ‘cross_entropy’, or as a loss function implementing the Loss interface.

  • optimizer (Optimizer | Minimizer | None) – An instance of an optimizer or a callable to be used in training. Refer to Minimizer for more information on the callable protocol. When None defaults to SLSQP.

  • warm_start (bool) – Use weights from previous fit to start next fit.

  • initial_point (np.ndarray) – Initial point for the optimizer to start from.

  • callback (Callable[[np.ndarray, float], None] | None) – A reference to a user’s callback function that has two parameters and returns None. The callback can access intermediate data during training. On each iteration an optimizer invokes the callback and passes current weights as an array and a computed value as a float of the objective function being optimized. This allows to track how well optimization / training process is going on.

Harekete geçirir:

QiskitMachineLearningError – unknown loss, invalid neural network

Attributes

callback#

Return the callback.

fit_result#

Returns a resulting object from the optimization procedure. Please refer to the documentation of the OptimizerResult class for more details.

Harekete geçirir:

QiskitMachineLearningError – If the model has not been fit.

initial_point#

Returns current initial point

loss#

Returns the underlying neural network.

neural_network#

Returns the underlying neural network.

optimizer#

Returns an optimizer to be used in training.

warm_start#

Returns the warm start flag.

weights#

Returns trained weights as a numpy array. The weights can be also queried by calling model.fit_result.x, but in this case their representation depends on the optimizer used.

Harekete geçirir:

QiskitMachineLearningError – If the model has not been fit.

Methods

fit(X, y)[kaynak]#

Fit the model to data matrix X and target(s) y.

Parametreler:
Dönüşler:

returns a trained model.

Dönüş türü:

self

Harekete geçirir:

QiskitMachineLearningError – In case of invalid data (e.g. incompatible with network)

classmethod load(file_name)#

Loads a model from the file. If the loaded model is not an instance of the class whose method was called, then a warning is raised. Nevertheless, the loaded model may be a valid model.

Parametreler:

file_name (str) – a file name or path to load a model from.

Dönüşler:

A loaded model.

Harekete geçirir:

TypeError – if a loaded model is not an instance of the expected class.

Dönüş türü:

Any

abstract predict(X)[kaynak]#

Predict using the network specified to the model.

Parametreler:

X (ndarray) – The input data.

Harekete geçirir:

QiskitMachineLearningError – Model needs to be fit to some training data first

Dönüşler:

The predicted classes.

Dönüş türü:

ndarray

save(file_name)#

Saves this model to the specified file. Internally, the model is serialized via dill. All parameters are saved, including a primitive instance that is referenced by internal objects. That means if a model is loaded from a file and is used, for instance, for inference, the same primitive will be used even if a cloud primitive was used.

Parametreler:

file_name (str) – a file name or path where to save the model.

abstract score(X, y, sample_weight=None)[kaynak]#

Returns a score of this model given samples and true values for the samples. In case of classification this should be mean accuracy, in case of regression the coefficient of determination \(R^2\) of the prediction.

Parametreler:
  • X (ndarray) – Test samples.

  • y (ndarray) – True values for X.

  • sample_weight (ndarray | None) – Sample weights. Default is None.

Dönüşler:

a float score of the model.

Dönüş türü:

float