什么是 Keras 的嵌入?

克拉斯的文件并不清楚这到底是什么。我明白我们可以用这个来压缩输入特征空间到一个更小的空间。但是,从神经设计的角度来看,这是如何做到的呢?这是自动编码器吗 RBM?

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As far as I know, the Embedding layer is a simple matrix multiplication that transforms words into their corresponding word embeddings.

The weights of the Embedding layer are of the shape (vocabulary_size, embedding_dimension). For each training sample, its input are integers, which represent certain words. The integers are in the range of the vocabulary size. The Embedding layer transforms each integer i into the ith line of the embedding weights matrix.

In order to quickly do this as a matrix multiplication, the input integers are not stored as a list of integers but as a one-hot matrix. Therefore the input shape is (nb_words, vocabulary_size) with one non-zero value per line. If you multiply this by the embedding weights, you get the output in the shape

(nb_words, vocab_size) x (vocab_size, embedding_dim) = (nb_words, embedding_dim)

So with a simple matrix multiplication you transform all the words in a sample into the corresponding word embeddings.

In Keras, the Embedding layer is NOT a simple matrix multiplication layer, but a look-up table layer (see call function below or the original definition).

def call(self, inputs):
if K.dtype(inputs) != 'int32':
inputs = K.cast(inputs, 'int32')
out = K.gather(self.embeddings, inputs)
return out

What it does is to map each a known integer n in inputs to a trainable feature vector W[n], whose dimension is the so-called embedded feature length.

The ABC0 Embedding layer is not performing any matrix multiplication but it only:

1. creates a weight matrix of (vocabulary_size)x(embedding_dimension) dimensions

2. indexes this weight matrix


It is always useful to have a look at the source code to understand what a class does. In this case, we will have a look at the class Embedding which inherits from the base layer class called Layer.

(1) - Creating a weight matrix of (vocabulary_size)x(embedding_dimension) dimensions:

This is occuring at the build function of Embedding:

def build(self, input_shape):
self.embeddings = self.add_weight(
shape=(self.input_dim, self.output_dim),
initializer=self.embeddings_initializer,
name='embeddings',
regularizer=self.embeddings_regularizer,
constraint=self.embeddings_constraint,
dtype=self.dtype)
self.built = True

If you have a look at the base class Layer you will see that the function add_weight above simply creates a matrix of trainable weights (in this case of (vocabulary_size)x(embedding_dimension) dimensions):

def add_weight(self,
name,
shape,
dtype=None,
initializer=None,
regularizer=None,
trainable=True,
constraint=None):
"""Adds a weight variable to the layer.
# Arguments
name: String, the name for the weight variable.
shape: The shape tuple of the weight.
dtype: The dtype of the weight.
initializer: An Initializer instance (callable).
regularizer: An optional Regularizer instance.
trainable: A boolean, whether the weight should
be trained via backprop or not (assuming
that the layer itself is also trainable).
constraint: An optional Constraint instance.
# Returns
The created weight variable.
"""
initializer = initializers.get(initializer)
if dtype is None:
dtype = K.floatx()
weight = K.variable(initializer(shape),
dtype=dtype,
name=name,
constraint=constraint)
if regularizer is not None:
with K.name_scope('weight_regularizer'):
self.add_loss(regularizer(weight))
if trainable:
self._trainable_weights.append(weight)
else:
self._non_trainable_weights.append(weight)
return weight

(2) - Indexing this weight matrix

This is occuring at the call function of Embedding:

def call(self, inputs):
if K.dtype(inputs) != 'int32':
inputs = K.cast(inputs, 'int32')
out = K.gather(self.embeddings, inputs)
return out

This functions returns the output of the Embedding layer which is K.gather(self.embeddings, inputs). What tf.keras.backend.gather exactly does is to index the weights matrix self.embeddings (see build function above) according to the inputs which should be lists of positive integers.

These lists can be retrieved for example if you pass your text/words inputs to the one_hot function of Keras which encodes a text into a list of word indexes of size n (this is NOT one hot encoding - see also this example for more info: https://machinelearningmastery.com/use-word-embedding-layers-deep-learning-keras/).


Therefore, that's all. There is no matrix multiplication.

On the contrary, the ABC0 Embedding layer is only useful because exactly it avoids performing a matrix multiplication and hence it economizes on some computational resources.

Otherwise, you could just use a Keras Dense layer (after you have encoded your input data) to get a matrix of trainable weights (of (vocabulary_size)x(embedding_dimension) dimensions) and then simply do the multiplication to get the output which will be exactly the same with the output of the Embedding layer.

In simple words (from the functionality point of view), it is a one-hot encoder and fully-connected layer. The layer weights are trainable.