A LearningRateSchedule
that uses an exponential decay schedule.
Source: R/optimizers-schedules.R
learning_rate_schedule_exponential_decay.Rd
When training a model, it is often useful to lower the learning rate as the training progresses. This schedule applies an exponential decay function to an optimizer step, given a provided initial learning rate.
The schedule is a 1-arg callable that produces a decayed learning rate when passed the current optimizer step. This can be useful for changing the learning rate value across different invocations of optimizer functions. It is computed as:
decayed_learning_rate <- function(step) {
initial_learning_rate * decay_rate ^ (step / decay_steps)
}
If the argument staircase
is TRUE
, then step / decay_steps
is
an integer division and the decayed learning rate follows a
staircase function.
You can pass this schedule directly into a optimizer
as the learning rate.
Usage
learning_rate_schedule_exponential_decay(
initial_learning_rate,
decay_steps,
decay_rate,
staircase = FALSE,
name = "ExponentialDecay"
)
Arguments
- initial_learning_rate
A float. The initial learning rate.
- decay_steps
A integer. Must be positive. See the decay computation above.
- decay_rate
A float. The decay rate.
- staircase
Boolean. If
TRUE
decay the learning rate at discrete intervals.- name
String. Optional name of the operation. Defaults to
"ExponentialDecay
".
Value
A 1-arg callable learning rate schedule that takes the current optimizer
step and outputs the decayed learning rate, a scalar tensor of the
same type as initial_learning_rate
.
Examples
When fitting a Keras model, decay every 100000 steps with a base of 0.96:
initial_learning_rate <- 0.1
lr_schedule <- learning_rate_schedule_exponential_decay(
initial_learning_rate,
decay_steps=100000,
decay_rate=0.96,
staircase=TRUE)
model %>% compile(
optimizer = optimizer_sgd(learning_rate = lr_schedule),
loss = 'sparse_categorical_crossentropy',
metrics = c('accuracy'))
model %>% fit(data, labels, epochs=5)
The learning rate schedule is also serializable and deserializable using
keras$optimizers$schedules$serialize
and
keras$optimizers$schedules$deserialize
.
See also
Other optimizer learning rate schedules: LearningRateSchedule()
learning_rate_schedule_cosine_decay()
learning_rate_schedule_cosine_decay_restarts()
learning_rate_schedule_inverse_time_decay()
learning_rate_schedule_piecewise_constant_decay()
learning_rate_schedule_polynomial_decay()