BayesianOptimization Tuner
- Original Link : https://keras.io/api/keras_tuner/tuners/bayesian/
- Last Checked at : 2024-11-25
BayesianOptimization
class
keras_tuner.BayesianOptimization(
hypermodel=None,
objective=None,
max_trials=10,
num_initial_points=None,
alpha=0.0001,
beta=2.6,
seed=None,
hyperparameters=None,
tune_new_entries=True,
allow_new_entries=True,
max_retries_per_trial=0,
max_consecutive_failed_trials=3,
**kwargs
)
BayesianOptimization tuning with Gaussian process.
Arguments
- hypermodel: Instance of
HyperModel
class (or callable that takes hyperparameters and returns aModel
instance). It is optional whenTuner.run_trial()
is overridden and does not useself.hypermodel
. - objective: A string,
keras_tuner.Objective
instance, or a list ofkeras_tuner.Objective
s and strings. If a string, the direction of the optimization (min or max) will be inferred. If a list ofkeras_tuner.Objective
, we will minimize the sum of all the objectives to minimize subtracting the sum of all the objectives to maximize. Theobjective
argument is optional whenTuner.run_trial()
orHyperModel.fit()
returns a single float as the objective to minimize. - max_trials: Integer, the total number of trials (model configurations)
to test at most. Note that the oracle may interrupt the search
before
max_trial
models have been tested if the search space has been exhausted. Defaults to 10. - num_initial_points: Optional number of randomly generated samples as initial training data for Bayesian optimization. If left unspecified, a value of 3 times the dimensionality of the hyperparameter space is used.
- alpha: Float, the value added to the diagonal of the kernel matrix during fitting. It represents the expected amount of noise in the observed performances in Bayesian optimization. Defaults to 1e-4.
- beta: Float, the balancing factor of exploration and exploitation. The larger it is, the more explorative it is. Defaults to 2.6.
- seed: Optional integer, the random seed.
- hyperparameters: Optional
HyperParameters
instance. Can be used to override (or register in advance) hyperparameters in the search space. - tune_new_entries: Boolean, whether hyperparameter entries that are
requested by the hypermodel but that were not specified in
hyperparameters
should be added to the search space, or not. If not, then the default value for these parameters will be used. Defaults to True. - allow_new_entries: Boolean, whether the hypermodel is allowed to
request hyperparameter entries not listed in
hyperparameters
. Defaults to True. - max_retries_per_trial: Integer. Defaults to 0. The maximum number of
times to retry a
Trial
if the trial crashed or the results are invalid. - max_consecutive_failed_trials: Integer. Defaults to 3. The maximum
number of consecutive failed
Trial
s. When this number is reached, the search will be stopped. ATrial
is marked as failed when none of the retries succeeded. - **kwargs: Keyword arguments relevant to all
Tuner
subclasses. Please see the docstring forTuner
.