Hashing
classkeras.layers.Hashing(
num_bins, mask_value=None, salt=None, output_mode="int", sparse=False, **kwargs
)
A preprocessing layer which hashes and bins categorical features.
This layer transforms categorical inputs to hashed output. It element-wise
converts a ints or strings to ints in a fixed range. The stable hash
function uses tensorflow::ops::Fingerprint
to produce the same output
consistently across all platforms.
This layer uses FarmHash64 by default, which provides a consistent hashed output across different platforms and is stable across invocations, regardless of device and context, by mixing the input bits thoroughly.
If you want to obfuscate the hashed output, you can also pass a random
salt
argument in the constructor. In that case, the layer will use the
SipHash64 hash function, with
the salt
value serving as additional input to the hash function.
Note: This layer internally uses TensorFlow. It cannot be used as part of the compiled computation graph of a model with any backend other than TensorFlow. It can however be used with any backend when running eagerly. It can also always be used as part of an input preprocessing pipeline with any backend (outside the model itself), which is how we recommend to use this layer.
Note: This layer is safe to use inside a tf.data
pipeline
(independently of which backend you're using).
Example (FarmHash64)
>>> layer = keras.layers.Hashing(num_bins=3)
>>> inp = [['A'], ['B'], ['C'], ['D'], ['E']]
>>> layer(inp)
array([[1],
[0],
[1],
[1],
[2]])>
Example (FarmHash64) with a mask value
>>> layer = keras.layers.Hashing(num_bins=3, mask_value='')
>>> inp = [['A'], ['B'], [''], ['C'], ['D']]
>>> layer(inp)
array([[1],
[1],
[0],
[2],
[2]])
Example (SipHash64)
>>> layer = keras.layers.Hashing(num_bins=3, salt=[133, 137])
>>> inp = [['A'], ['B'], ['C'], ['D'], ['E']]
>>> layer(inp)
array([[1],
[2],
[1],
[0],
[2]])
Example (Siphash64 with a single integer, same as salt=[133, 133]
)
>>> layer = keras.layers.Hashing(num_bins=3, salt=133)
>>> inp = [['A'], ['B'], ['C'], ['D'], ['E']]
>>> layer(inp)
array([[0],
[0],
[2],
[1],
[0]])
Arguments
mask_value
bin, so the effective number of bins is (num_bins - 1)
if mask_value
is set.None
means no mask term will be added and the
hashing will start at index 0. Defaults to None
.None
, uses the FarmHash64 hash
function. It also supports tuple/list of 2 unsigned
integer numbers, see reference paper for details.
Defaults to None
."int"
, "one_hot"
, "multi_hot"
, or
"count"
configuring the layer as follows:"int"
: Return the integer bin indices directly."one_hot"
: Encodes each individual element in the input into an
array the same size as num_bins
, containing a 1
at the input's bin index. If the last dimension is size 1,
will encode on that dimension.
If the last dimension is not size 1, will append a new
dimension for the encoded output."multi_hot"
: Encodes each sample in the input into a
single array the same size as num_bins
,
containing a 1 for each bin index
index present in the sample. Treats the last dimension
as the sample dimension, if input shape is
(..., sample_length)
, output shape will be
(..., num_tokens)
."count"
: As "multi_hot"
, but the int array contains a count of
the number of times the bin index appeared in the sample.
Defaults to "int"
."one_hot"
, "multi_hot"
,
and "count"
output modes. Only supported with TensorFlow
backend. If True
, returns a SparseTensor
instead of
a dense Tensor
. Defaults to False
.Input shape
A single string, a list of strings, or an int32
or int64
tensor
of shape (batch_size, ...,)
.
Output shape
An int32
tensor of shape (batch_size, ...)
.
Reference