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# -*- coding: utf-8 -*- | |
""" Use torchMoji to encode texts into emotional feature vectors. | |
""" | |
from __future__ import print_function, division, unicode_literals | |
import json | |
from torchmoji.sentence_tokenizer import SentenceTokenizer | |
from torchmoji.model_def import torchmoji_feature_encoding | |
from torchmoji.global_variables import PRETRAINED_PATH, VOCAB_PATH | |
TEST_SENTENCES = ['I love mom\'s cooking', | |
'I love how you never reply back..', | |
'I love cruising with my homies', | |
'I love messing with yo mind!!', | |
'I love you and now you\'re just gone..', | |
'This is shit', | |
'This is the shit'] | |
maxlen = 30 | |
batch_size = 32 | |
print('Tokenizing using dictionary from {}'.format(VOCAB_PATH)) | |
with open(VOCAB_PATH, 'r') as f: | |
vocabulary = json.load(f) | |
st = SentenceTokenizer(vocabulary, maxlen) | |
tokenized, _, _ = st.tokenize_sentences(TEST_SENTENCES) | |
print('Loading model from {}.'.format(PRETRAINED_PATH)) | |
model = torchmoji_feature_encoding(PRETRAINED_PATH) | |
print(model) | |
print('Encoding texts..') | |
encoding = model(tokenized) | |
print('First 5 dimensions for sentence: {}'.format(TEST_SENTENCES[0])) | |
print(encoding[0,:5]) | |
# Now you could visualize the encodings to see differences, | |
# run a logistic regression classifier on top, | |
# or basically anything you'd like to do. |