I've been trying to solve a problem with the spacy Tokenizer for a while, without any success. Also, I'm not sure if it's a problem with the tokenizer or some other part of the pipeline.
I have an application that for reasons besides the point, creates a spacy
Doc from the spacy vocab and the list of tokens from a string (see code below). Note that while this is not the simplest and most common way to do this, according to spacy doc this can be done.
However, when I create a
Doc for a text that contains compound words or dates with hyphen as a separator, the behavior I am getting is not what I expected.
import spacy from spacy.language import Doc # My current way doc = Doc(nlp.vocab, words=tokens) # Tokens is a well defined list of tokens for a certein string # Standard way doc = nlp("My text...")
For example, with the following text, if I create the
Doc using the standard procedure, the spacy
Tokenizer recognizes the
"-" as tokens but the
Doc text is the same as the input text, in addition the spacy NER model correctly recognizes the DATE entity.
import spacy doc = nlp("What time will sunset be on 2022-12-24?") print(doc.text) tokens = [str(token) for token in doc] print(tokens) # Show entities print(doc.ents.label_) print(doc.ents.text)
What time will sunset be on 2022-12-24? ['What', 'time', 'will', 'sunset', 'be', 'on', '2022', '-', '12', '-', '24', '?'] DATE 2022-12-24
On the other hand, if I create the
Doc from the model's
vocab and the previously calculated tokens, the result obtained is different. Note that for the sake of simplicity I am using the tokens from
doc, so I'm sure there are no differences in tokens. Also note that I am manually running each pipeline model in the correct order with the
doc, so at the end of this process I would theoretically get the same results.
However, as you can see in the output below, while the Doc's tokens are the same, the Doc's text is different, there were blank spaces between the digits and the date separators.
doc2 = Doc(nlp.vocab, words=tokens) # Run each model in pipeline for model_name in nlp.pipe_names: pipe = nlp.get_pipe(model_name) doc2 = pipe(doc2) # Print text and tokens print(doc2.text) tokens = [str(token) for token in doc2] print(tokens) # Show entities print(doc.ents.label_) print(doc.ents.text)
what time will sunset be on 2022 - 12 - 24 ? ['what', 'time', 'will', 'sunset', 'be', 'on', '2022', '-', '12', '-', '24', '?'] DATE 2022 - 12 - 24
I know it must be something silly that I'm missing but I don't realize it.
Could someone please explain to me what I'm doing wrong and point me in the right direction?
Thanks a lot in advance!
Following the Talha Tayyab suggestion, I have to create an array of booleans with the same length that my list of tokens to indicate for each one, if the token is followed by an empty space. Then pass this array in doc construction as follows:
doc = Doc(nlp.vocab, words=words, spaces=spaces).
To compute this list of boolean values based on my original text string and list of tokens, I implemented the following vanilla function:
def get_spaces(self, text: str, tokens: List[str]) -> List[bool]: # Spaces spaces =  # Copy text to easy operate t = text.lower() # Iterate over tokens for token in tokens: if t.startswith(token.lower()): t = t[len(token):] # Remove token # If after removing token we have an empty space if len(t) > 0 and t == " ": spaces.append(True) t = t[1:] # Remove space else: spaces.append(False) return spaces
With these two improvements in my code, the result obtained is as expected. However, now I have the following question:
Is there a more spacy-like way to compute whitespace, instead of using my vanilla implementation?