A preprocessing layer which buckets continuous features by ranges.
layer_discretization(
object,
bin_boundaries = NULL,
num_bins = NULL,
epsilon = 0.01,
...
)
What to compose the new Layer
instance with. Typically a
Sequential model or a Tensor (e.g., as returned by layer_input()
).
The return value depends on object
. If object
is:
missing or NULL
, the Layer
instance is returned.
a Sequential
model, the model with an additional layer is returned.
a Tensor, the output tensor from layer_instance(object)
is returned.
A list of bin boundaries. The leftmost and rightmost bins
will always extend to -Inf
and Inf
, so bin_boundaries = c(0., 1., 2.)
generates bins (-Inf, 0.)
, [0., 1.)
, [1., 2.)
, and [2., +Inf)
. If
this option is set, adapt
should not be called.
The integer number of bins to compute. If this option is set,
adapt
should be called to learn the bin boundaries.
Error tolerance, typically a small fraction close to zero (e.g. 0.01). Higher values of epsilon increase the quantile approximation, and hence result in more unequal buckets, but could improve performance and resource consumption.
standard layer arguments.
This layer will place each element of its input data into one of several contiguous ranges and output an integer index indicating which range each element was placed in.
Input shape:
Any tf.Tensor
or tf.RaggedTensor
of dimension 2 or higher.
Output shape: Same as input shape.
https://www.tensorflow.org/api_docs/python/tf/keras/layers/Discretization
https://keras.io/api/layers/preprocessing_layers/numerical/discretization
Other numerical features preprocessing layers:
layer_normalization()
Other preprocessing layers:
layer_category_encoding()
,
layer_center_crop()
,
layer_hashing()
,
layer_integer_lookup()
,
layer_normalization()
,
layer_random_contrast()
,
layer_random_crop()
,
layer_random_flip()
,
layer_random_height()
,
layer_random_rotation()
,
layer_random_translation()
,
layer_random_width()
,
layer_random_zoom()
,
layer_rescaling()
,
layer_resizing()
,
layer_string_lookup()
,
layer_text_vectorization()