I'd like to make a custom embedding layer in keras, but not sure how to go about it.
As input I would pass for each example a variable number of integers (indices, from which I would like to generate a fixed size vector). A numpy version (that has batch_size = 1) of this embedding would be:
class numpyEmbedding():
def __init__(self,vocab_size):
self.vocab_size = vocab_size
self.build()
def build(self):
self.W = np.eye(self.vocab_size,dtype=np.int8)
def __call__(self,x):
return np.sum(self.W[:,x],axis=-1)
I imagine a keras version of this layer should be possible but I am not sure how to get it working and what considerations I need to have since it would have to be applied on mini-batches of arrays rather than single arrays.
Thanks!
Ilya
Edit:
Example input:
vec = np.random.choice(np.arange(10),100).astype(int)
emb=numpyEmbedding(int(10))(vec)
Output:
array([11, 10, 11, 9, 8, 9, 13, 12, 6, 11])