Feliks Zaslavskiy
Updaets
4132514
raw
history blame
1.52 kB
from transformers import AlbertTokenizer, AlbertModel
from sklearn.metrics.pairwise import cosine_similarity
# base
# large
tokenizer = AlbertTokenizer.from_pretrained('albert-base-v2')
model = AlbertModel.from_pretrained("albert-base-v2")
a1 = "65 Mountain Blvd Ext, Warren, NJ 07059"
a2 = "112 Mountain Blvd Ext, Warren, NJ 07059"
a3 = "1677 NJ-27 #2, Edison, NJ 08817"
a4 = "5078 S Maryland Pkwy, Las Vegas, NV 89119"
a5 = "65 Mountain Boulevard Ext, Warren, NJ 07059"
def get_embedding(input_text):
encoded_input = tokenizer(input_text, return_tensors='pt')
input_ids = encoded_input.input_ids
input_num_tokens = input_ids.shape[1]
print( "Number of input tokens: " + str(input_num_tokens))
print("Length of input: " + str(len(input_text)))
list_of_tokens = tokenizer.convert_ids_to_tokens(input_ids.view(-1).tolist())
print( "Tokens : " + ' '.join(list_of_tokens))
output = model(**encoded_input)
embedding = output.last_hidden_state[0][0]
return embedding.tolist()
e1 = get_embedding(a1)
e2 = get_embedding(a2)
#e3 = get_embedding(a3)
e4 = get_embedding(a4)
e5 = get_embedding(a5)
print(f"a1 {a1} to {a2} a2")
print(cosine_similarity([e1], [e2]))
print(f"a1 {a1} to {a4} a4")
print(cosine_similarity([e1], [e4]))
print(f"a1 {a1} to {a5} a5")
print(cosine_similarity([e1], [e5]))
# with base
#a1 to a2
#[[0.99512167]]
#a1 to a4
#[[0.94850088]]
#a1 to a5
#[[0.99636901]]
# with large
#a1 to a2
#[[0.99682108]]
#a1 to a4
#[[0.94006972]]
#a1 to a5
#[[0.99503919]]