src.model.deeplearn.optimizer.centralized_adadelta

Classes

CentralizedAdadelta([learning_rate, rho, ...])

Stochastic gradient descent with dimension-wise adaptive learning rate.

class src.model.deeplearn.optimizer.centralized_adadelta.CentralizedAdadelta(learning_rate=0.001, rho=0.95, epsilon=1e-07, weight_decay=None, clipnorm=None, clipvalue=None, global_clipnorm=None, use_ema=False, ema_momentum=0.99, ema_overwrite_frequency=None, loss_scale_factor=None, gradient_accumulation_steps=None, name='adadelta', **kwargs)

Stochastic gradient descent with dimension-wise adaptive learning rate. The optimizer behaves exactly like keras.optimizers.Adadelta but its gradients are centered.

update_step(gradient, variable, learning_rate)

Modify the gradients of the backbone optimizer by centering them before applying them to fit the model’s parameters.

See CentralizedAdam.center_gradients().

Returns:

Nothing at all, but the parameters are updated with the centered gradients instead of the original ones.