L2Loss#
- class L2Loss[kaynak]#
Bases:
Loss
This class computes the L2 loss (i.e. squared error) for each sample as:
\[\text{L2Loss}(predict, target) = \sum_{i=0}^{N_{\text{elements}}} (predict_i - target_i)^2.\]Methods
- evaluate(predict, target)[kaynak]#
An abstract method for evaluating the loss function. Inputs are expected in a shape of
(N, *)
. WhereN
is a number of samples. Loss is computed for each sample individually.- Parametreler:
- Dönüşler:
An array with values of the loss function of the shape
(N, 1)
.- Harekete geçirir:
QiskitMachineLearningError – shapes of predict and target do not match
- Dönüş türü:
- gradient(predict, target)[kaynak]#
An abstract method for computing the gradient. Inputs are expected in a shape of
(N, *)
. WhereN
is a number of samples. Gradient is computed for each sample individually.- Parametreler:
- Dönüşler:
An array with gradient values of the shape
(N, *)
. The output shape depends on the loss function.- Harekete geçirir:
QiskitMachineLearningError – shapes of predict and target do not match.
- Dönüş türü: