From udacity notebook exercise; After embeddings were trained, I'm trying to get all related words from an input word and I'm getting wierd results. Is the code below correct?
final_embeddings = normalized_embeddings.eval()
word='history'
nearest = (-final_embeddings[dictionary[word], :]).argsort()[1:9]
for idx in range(len(nearest)):
print reverse_dictionary[nearest[idx]]