I have designed a model based on BERT to solve NER task. I am using
transformers library with the
"dccuchile/bert-base-spanish-wwm-cased" pre-trained model. The problem comes when my model detect an entity but the token is
'[UNK]'. How could I know which is the string behind that token?
I know that an unknown token can't be reverted to the original one, but I would like to at least capture that values before passing the inputs to the model.
The code is really simple:
sentenceIds = tokenizer.encode(sentence,add_special_tokens = True) inputs = pad_sequences([sentenceIds], maxlen=256, dtype="long", value=0, truncating="post", padding="post") att_mask = torch.tensor([[int(token_id > 0) for token_id in inputs]]).to(device) inputs = torch.tensor(inputs).to(device) with torch.no_grad(): outputs = model(inputs, token_type_ids=None, attention_mask=att_mask)
As you see is really simple, just tokenize, padding or truncating, creating attentionMask and calling to the model.
I have tried using
regex, trying to find the two tokens that are around it and things like that, but I can't solve it properly.