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--- |
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language: en |
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tags: |
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- timelms |
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- twitter |
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license: mit |
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datasets: |
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- twitter-api |
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--- |
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# Twitter March 2021 (RoBERTa-base, 111M) |
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This is a RoBERTa-base model trained on 111.26M tweets until the end of March 2021. |
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More details and performance scores are available in the [TimeLMs paper](https://arxiv.org/abs/2202.03829). |
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Below, we provide some usage examples using the standard Transformers interface. For another interface more suited to comparing predictions and perplexity scores between models trained at different temporal intervals, check the [TimeLMs repository](https://github.com/cardiffnlp/timelms). |
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For other models trained until different periods, check this [table](https://github.com/cardiffnlp/timelms#released-models). |
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## Preprocess Text |
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Replace usernames and links for placeholders: "@user" and "http". |
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If you're interested in retaining verified users which were also retained during training, you may keep the users listed [here](https://github.com/cardiffnlp/timelms/tree/main/data). |
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```python |
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def preprocess(text): |
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preprocessed_text = [] |
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for t in text.split(): |
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if len(t) > 1: |
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t = '@user' if t[0] == '@' and t.count('@') == 1 else t |
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t = 'http' if t.startswith('http') else t |
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preprocessed_text.append(t) |
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return ' '.join(preprocessed_text) |
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``` |
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## Example Masked Language Model |
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```python |
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from transformers import pipeline, AutoTokenizer |
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MODEL = "cardiffnlp/twitter-roberta-base-mar2021" |
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fill_mask = pipeline("fill-mask", model=MODEL, tokenizer=MODEL) |
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tokenizer = AutoTokenizer.from_pretrained(MODEL) |
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def pprint(candidates, n): |
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for i in range(n): |
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token = tokenizer.decode(candidates[i]['token']) |
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score = candidates[i]['score'] |
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print("%d) %.5f %s" % (i+1, score, token)) |
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texts = [ |
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"So glad I'm <mask> vaccinated.", |
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"I keep forgetting to bring a <mask>.", |
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"Looking forward to watching <mask> Game tonight!", |
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] |
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for text in texts: |
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t = preprocess(text) |
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print(f"{'-'*30}\n{t}") |
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candidates = fill_mask(t) |
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pprint(candidates, 5) |
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``` |
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Output: |
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``` |
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------------------------------ |
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So glad I'm <mask> vaccinated. |
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1) 0.42688 getting |
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2) 0.30230 not |
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3) 0.07375 fully |
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4) 0.03619 already |
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5) 0.03055 being |
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------------------------------ |
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I keep forgetting to bring a <mask>. |
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1) 0.07603 mask |
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2) 0.04933 book |
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3) 0.04029 knife |
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4) 0.03461 laptop |
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5) 0.03069 bag |
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------------------------------ |
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Looking forward to watching <mask> Game tonight! |
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1) 0.53945 the |
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2) 0.27647 The |
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3) 0.03881 End |
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4) 0.01711 this |
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5) 0.00831 Championship |
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``` |
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## Example Tweet Embeddings |
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```python |
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from transformers import AutoTokenizer, AutoModel, TFAutoModel |
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import numpy as np |
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from scipy.spatial.distance import cosine |
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from collections import Counter |
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def get_embedding(text): # naive approach for demonstration |
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text = preprocess(text) |
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encoded_input = tokenizer(text, return_tensors='pt') |
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features = model(**encoded_input) |
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features = features[0].detach().cpu().numpy() |
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return np.mean(features[0], axis=0) |
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MODEL = "cardiffnlp/twitter-roberta-base-mar2021" |
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tokenizer = AutoTokenizer.from_pretrained(MODEL) |
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model = AutoModel.from_pretrained(MODEL) |
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query = "The book was awesome" |
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tweets = ["I just ordered fried chicken 🐣", |
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"The movie was great", |
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"What time is the next game?", |
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"Just finished reading 'Embeddings in NLP'"] |
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sims = Counter() |
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for tweet in tweets: |
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sim = 1 - cosine(get_embedding(query), get_embedding(tweet)) |
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sims[tweet] = sim |
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print('Most similar to: ', query) |
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print(f"{'-'*30}") |
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for idx, (tweet, sim) in enumerate(sims.most_common()): |
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print("%d) %.5f %s" % (idx+1, sim, tweet)) |
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``` |
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Output: |
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``` |
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Most similar to: The book was awesome |
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------------------------------ |
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1) 0.99106 The movie was great |
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2) 0.96662 Just finished reading 'Embeddings in NLP' |
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3) 0.96150 I just ordered fried chicken 🐣 |
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4) 0.95560 What time is the next game? |
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``` |
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## Example Feature Extraction |
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```python |
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from transformers import AutoTokenizer, AutoModel, TFAutoModel |
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import numpy as np |
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MODEL = "cardiffnlp/twitter-roberta-base-mar2021" |
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tokenizer = AutoTokenizer.from_pretrained(MODEL) |
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text = "Good night 😊" |
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text = preprocess(text) |
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# Pytorch |
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model = AutoModel.from_pretrained(MODEL) |
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encoded_input = tokenizer(text, return_tensors='pt') |
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features = model(**encoded_input) |
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features = features[0].detach().cpu().numpy() |
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features_mean = np.mean(features[0], axis=0) |
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#features_max = np.max(features[0], axis=0) |
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# # Tensorflow |
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# model = TFAutoModel.from_pretrained(MODEL) |
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# encoded_input = tokenizer(text, return_tensors='tf') |
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# features = model(encoded_input) |
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# features = features[0].numpy() |
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# features_mean = np.mean(features[0], axis=0) |
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# #features_max = np.max(features[0], axis=0) |
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``` |