RMSprop
classkeras.optimizers.RMSprop(
learning_rate=0.001,
rho=0.9,
momentum=0.0,
epsilon=1e-07,
centered=False,
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="rmsprop",
**kwargs
)
Optimizer that implements the RMSprop algorithm.
The gist of RMSprop is to:
This implementation of RMSprop uses plain momentum, not Nesterov momentum.
The centered version additionally maintains a moving average of the gradients, and uses that average to estimate the variance.
Arguments
keras.optimizers.schedules.LearningRateSchedule
instance, or
a callable that takes no arguments and returns the actual value to
use. The learning rate. Defaults to 0.001
.1 - momentum
.True
, gradients are normalized by the estimated
variance of the gradient; if False, by the uncentered second moment.
Setting this to True
may help with training, but is slightly more
expensive in terms of computation and memory. Defaults to False
.False
.
If True
, exponential moving average
(EMA) is applied. EMA consists of computing an exponential moving
average of the weights of the model (as the weight values change
after each training batch), and periodically overwriting the
weights with their moving average.use_ema=True
.
This is the momentum to use when computing
the EMA of the model's weights:
new_average = ema_momentum * old_average + (1 - ema_momentum) *
current_variable_value
.use_ema=True
. Every ema_overwrite_frequency
steps of iterations,
we overwrite the model variable by its moving average.
If None, the optimizer
does not overwrite model variables in the middle of training,
and you need to explicitly overwrite the variables
at the end of training by calling
optimizer.finalize_variable_values()
(which updates the model
variables in-place). When using the built-in fit()
training loop,
this happens automatically after the last epoch,
and you don't need to do anything.None
. If a float, the scale factor will
be multiplied the loss before computing gradients, and the inverse
of the scale factor will be multiplied by the gradients before
updating variables. Useful for preventing underflow during
mixed precision training. Alternately,
keras.optimizers.LossScaleOptimizer
will
automatically set a loss scale factor.None
. If an int, model & optimizer
variables will not be updated at every step; instead they will be
updated every gradient_accumulation_steps
steps, using the average
value of the gradients since the last update. This is known as
"gradient accumulation". This can be useful
when your batch size is very small, in order to reduce gradient
noise at each update step. EMA frequency will look at "accumulated"
iterations value (optimizer steps // gradient_accumulation_steps).
Learning rate schedules will look at "real" iterations value
(optimizer steps).Example
>>> opt = keras.optimizers.RMSprop(learning_rate=0.1)
>>> var1 = keras.backend.Variable(10.0)
>>> loss = lambda: (var1 ** 2) / 2.0 # d(loss) / d(var1) = var1
>>> opt.minimize(loss, [var1])
>>> var1
9.683772
Reference