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metadata
license: apache-2.0
library_name: generic
tags:
  - text2text-generation
  - punctuation
  - sentence-boundary-detection
  - truecasing
  - true-casing
language:
  - af
  - am
  - ar
  - bg
  - bn
  - de
  - el
  - en
  - es
  - et
  - fa
  - fi
  - fr
  - gu
  - hi
  - hr
  - hu
  - id
  - is
  - it
  - ja
  - kk
  - kn
  - ko
  - ky
  - lt
  - lv
  - mk
  - ml
  - mr
  - nl
  - or
  - pa
  - pl
  - ps
  - pt
  - ro
  - ru
  - rw
  - so
  - sr
  - sw
  - ta
  - te
  - tr
  - uk
  - zh

Model Overview

This is an xlm-roberta fine-tuned to restore punctuation, true-case (capitalize), and detect sentence boundaries (full stops) in 47 languages.

Model Architecture

This model implements the following graph, which allows punctuation, true-casing, and fullstop prediction in every language without language-specific behavior:

graph.png

We start by tokenizing the text and encoding it with XLM-Roberta, which is the pre-trained portion of this graph.

Then we predict punctuation before and after every subtoken. Predicting before each token allows for Spanish inverted question marks. Predicting after every token allows for all other punctuation, including punctuation within continuous-script languages and acronyms.

We use embeddings to represent the predicted punctuation tokens to inform the sentence boundary head of the punctuation that'll be inserted into the text. This allows proper full stop prediction, since certain punctuation tokens (periods, questions marks, etc.) are strongly correlated with sentence boundaries.

We then shift full stop predictions to the right by one, to inform the true-casing head of where the beginning of each new sentence is. This is important since true-casing is strongly correlated to sentence boundaries.

For true-casing, we predict N predictions per subtoken, where N is the number of characters in the subtoken. In practice, N is the maximum subtoken length and extra predictions are ignored. Essentially, true-casing is modeled as a multi-label problem. This allows for upper-casing arbitrary characters, e.g., "NATO", "MacDonald", "mRNA", etc.

Applying all these predictions to the input text, we can punctuate, true-case, and split sentences in any language.

Tokenizer

Instead of the hacky wrapper used by FairSeq and strangely ported (not fixed) by HuggingFace, the xlm-roberta SentencePiece model was adjusted to correctly encode the text. Per HF's comments,

# Original fairseq vocab and spm vocab must be "aligned":
# Vocab    |    0    |    1    |   2    |    3    |  4  |  5  |  6  |   7   |   8   |  9
# -------- | ------- | ------- | ------ | ------- | --- | --- | --- | ----- | ----- | ----
# fairseq  | '<s>'   | '<pad>' | '</s>' | '<unk>' | ',' | '.' | '▁' | 's'   | '▁de' | '-'
# spm      | '<unk>' | '<s>'   | '</s>' | ','     | '.' | '▁' | 's' | '▁de' | '-'   | '▁a'

The SP model was un-hacked with the following snippet (SentencePiece experts, let me know if there is a problem here):

from sentencepiece import SentencePieceProcessor
from sentencepiece.sentencepiece_model_pb2 import ModelProto

m = ModelProto()
m.ParseFromString(open("/path/to/xlmroberta/sentencepiece.bpe.model", "rb").read())

pieces = list(m.pieces)
pieces = (
    [
        ModelProto.SentencePiece(piece="<s>", type=ModelProto.SentencePiece.Type.CONTROL),
        ModelProto.SentencePiece(piece="<pad>", type=ModelProto.SentencePiece.Type.CONTROL),
        ModelProto.SentencePiece(piece="</s>", type=ModelProto.SentencePiece.Type.CONTROL),
        ModelProto.SentencePiece(piece="<unk>", type=ModelProto.SentencePiece.Type.UNKNOWN),
    ]
    + pieces[3:]
    + [ModelProto.SentencePiece(piece="<mask>", type=ModelProto.SentencePiece.Type.USER_DEFINED)]
)
del m.pieces[:]
m.pieces.extend(pieces)

with open("/path/to/new/sp.model", "wb") as f:
    f.write(m.SerializeToString())

Post-Punctuation Tokens

This model predicts the following set of punctuation tokens after each subtoken:

Token Description Relevant Languages
<NULL> No punctuation All
<ACRONYM> Every character in this subword is followed by a period Primarily English, some European
. Latin full stop Many
, Latin comma Many
? Latin question mark Many
Full-width question mark Chinese, Japanese
Full-width comma Chinese, Japanese
Full-width full stop Chinese, Japanese
Ideographic comma Chinese, Japanese
Middle dot Japanese
Danda Hindi, Bengali, Oriya
؟ Arabic question mark Arabic
; Greek question mark Greek
Ethiopic full stop Amharic
Ethiopic comma Amharic
Ethiopic question mark Amharic

Pre-Punctuation Tokens

This model predicts the following set of punctuation tokens before each subword:

Token Description Relevant Languages
<NULL> No punctuation All
¿ Inverted question mark Spanish

Training Details

This model was trained in the NeMo framework.

Training Data

This model was trained with News Crawl data from WMT.

1M lines of text for each language was used, except for a few low-resource languages which may have used less.

Languages were chosen based on whether the News Crawl corpus contained enough reliable-quality data as judged by the author.

Limitations

This model was trained on news data, and may not perform well on conversational or informal data.

Further, this model is unlikely to be of production quality. It was trained with "only" 1M lines per language, and the dev sets may have been noisy due to the nature of web-scraped news data.

This model over-predicts the inverted Spanish question mark, ¿. Since ¿ is a rare token, especially in the context of a 47-language model, Spanish questions were over-sampled by selecting more of these sentences from additional training data that was not used. However, this seems to have "over-corrected" the problem and a lot of Spanish question marks are predicted.

Evaluation

In these metrics, keep in mind that

  1. The data is noisy

  2. Sentence boundaries and true-casing are conditioned on predicted punctuation, which is the most difficult task and sometimes incorrect. When conditioning on reference punctuation, true-casing and SBD is practically 100% for most languages.

  3. Punctuation can be subjective. E.g.,

    Hola mundo, ¿cómo estás?

    or

    Hola mundo. ¿Cómo estás?

    When the sentences are longer and more practical, these ambiguities abound and affect all 3 analytics.

Test Data and Example Generation

Each test example was generated using the following procedure:

  1. Concatenate 11 random sentences (1 + 10 for each sentence in the test set)
  2. Lower-case the concatenated sentence
  3. Remove all punctuation

The data is a held-out portion of News Crawl, which has been deduplicated. 3,000 lines of data per language was used, generating 3,000 unique examples of 11 sentences each. We generate 3,000 examples, where example i begins with sentence i and is followed by 10 random sentences selected from the 3,000 sentence test set.

Selected Language Evaluation Reports

For now, metrics for a few selected languages are shown below. Given the amount of work required to collect pretty metrics in 47 languages, I'll add more eventually.

Expand any of the following tabs to see metrics for that language.

English
punct_post test report: 
    label                                                precision    recall       f1           support   
    <NULL> (label_id: 0)                                    99.18      98.47      98.82     538769
    <ACRONYM> (label_id: 1)                                 66.03      78.63      71.78        571
    . (label_id: 2)                                         90.66      93.68      92.14      30581
    , (label_id: 3)                                         74.18      82.93      78.31      23230
    ? (label_id: 4)                                         78.10      80.08      79.07       1024
    ? (label_id: 5)                                          0.00       0.00       0.00          0
    , (label_id: 6)                                          0.00       0.00       0.00          0
    。 (label_id: 7)                                          0.00       0.00       0.00          0
    、 (label_id: 8)                                          0.00       0.00       0.00          0
    ・ (label_id: 9)                                          0.00       0.00       0.00          0
    । (label_id: 10)                                         0.00       0.00       0.00          0
    ؟ (label_id: 11)                                         0.00       0.00       0.00          0
    ، (label_id: 12)                                         0.00       0.00       0.00          0
    ; (label_id: 13)                                         0.00       0.00       0.00          0
    ። (label_id: 14)                                         0.00       0.00       0.00          0
    ፣ (label_id: 15)                                         0.00       0.00       0.00          0
    ፧ (label_id: 16)                                         0.00       0.00       0.00          0
    -------------------
    micro avg                                               97.56      97.56      97.56     594175
    macro avg                                               81.63      86.76      84.03     594175
    weighted avg                                            97.70      97.56      97.62     594175
cap test report: 
    label                                                precision    recall       f1           support   
    LOWER (label_id: 0)                                     99.71      99.85      99.78    2036824
    UPPER (label_id: 1)                                     96.40      93.27      94.81      87747
    -------------------
    micro avg                                               99.58      99.58      99.58    2124571
    macro avg                                               98.06      96.56      97.30    2124571
    weighted avg                                            99.57      99.58      99.58    2124571
seg test report: 
    label                                                precision    recall       f1           support   
    NOSTOP (label_id: 0)                                    99.97      99.98      99.98     564228
    FULLSTOP (label_id: 1)                                  99.73      99.54      99.64      32947
    -------------------
    micro avg                                               99.96      99.96      99.96     597175
    macro avg                                               99.85      99.76      99.81     597175
    weighted avg                                            99.96      99.96      99.96     597175

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