m2m100-418M-multilingual-summarization-multilarge-cs
This model is a fine-tuned checkpoint of facebook/m2m100_418M on the Multilingual large summarization dataset focused on Czech texts to produce multilingual summaries.
Task
The model deals with a multi-sentence summary in eight different languages. With the idea of adding other foreign language documents, and by having a considerable amount of Czech documents, we aimed to improve model summarization in the Czech language. Supported languages: ''cs', 'en', 'de', 'es', 'fr', 'ru', 'tu', 'zh'
#Usage Assume that you are using the provided MultilingualSummarizer.ipynb file and included files from git repository.
## Configuration of summarization pipeline
#
def summ_config():
cfg = OrderedDict([
## summarization model - checkpoint
# ctu-aic/m2m100-418M-multilingual-summarization-multilarge-cs
# ctu-aic/mt5-base-multilingual-summarization-multilarge-cs
# ctu-aic/mbart25-multilingual-summarization-multilarge-cs
("model_name", "ctu-aic/mbart25-multilingual-summarization-multilarge-cs"),
## language of summarization task
# language : string : cs, en, de, fr, es, tr, ru, zh
("language", "en"),
## generation method parameters in dictionary
#
("inference_cfg", OrderedDict([
("num_beams", 4),
("top_k", 40),
("top_p", 0.92),
("do_sample", True),
("temperature", 0.95),
("repetition_penalty", 1.23),
("no_repeat_ngram_size", None),
("early_stopping", True),
("max_length", 128),
("min_length", 10),
])),
#texts to summarize values = (list of strings, string, dataset)
("texts",
[
"english text1 to summarize",
"english text2 to summarize",
]
),
#OPTIONAL: Target summaries values = (list of strings, string, None)
('golds',
[
"target english text1",
"target english text2",
]),
#('golds', None),
])
return cfg
cfg = summ_config()
mSummarize = MultiSummarizer(**cfg)
summaries,scores = mSummarize(**cfg)
Dataset
Multilingual large summarization dataset consists of 10 sub-datasets mainly based on news and daily mails. For the training, it was used the entire training set and 72% of the validation set.
Train set: 3 464 563 docs
Validation set: 121 260 docs
Stats | fragment | avg document length | avg summary length | Documents | ||||
---|---|---|---|---|---|---|---|---|
dataset | compression | density | coverage | nsent | nwords | nsent | nwords | count |
cnc | 7.388 | 0.303 | 0.088 | 16.121 | 316.912 | 3.272 | 46.805 | 750K |
sumeczech | 11.769 | 0.471 | 0.115 | 27.857 | 415.711 | 2.765 | 38.644 | 1M |
cnndm | 13.688 | 2.983 | 0.538 | 32.783 | 676.026 | 4.134 | 54.036 | 300K |
xsum | 18.378 | 0.479 | 0.194 | 18.607 | 369.134 | 1.000 | 21.127 | 225K |
mlsum/tu | 8.666 | 5.418 | 0.461 | 14.271 | 214.496 | 1.793 | 25.675 | 274K |
mlsum/de | 24.741 | 8.235 | 0.469 | 32.544 | 539.653 | 1.951 | 23.077 | 243K |
mlsum/fr | 24.388 | 2.688 | 0.424 | 24.533 | 612.080 | 1.320 | 26.93 | 425K |
mlsum/es | 36.185 | 3.705 | 0.510 | 31.914 | 746.927 | 1.142 | 21.671 | 291K |
mlsum/ru | 78.909 | 1.194 | 0.246 | 62.141 | 948.079 | 1.012 | 11.976 | 27K |
cnewsum | 20.183 | 0.000 | 0.000 | 16.834 | 438.271 | 1.109 | 21.926 | 304K |
Tokenization
Truncation and padding were set to 512 tokens for the encoder (input text) and 128 for the decoder (summary).
Training
Trained based on cross-entropy loss.
Time: 3 days 10 hours
Epochs: 1072K steps = 10 (from 10)
GPUs: 4x NVIDIA A100-SXM4-40GB
eloss: 2.824 - 1.745
tloss: 4.559 - 1.615
ROUGE results per individual dataset test set:
ROUGE | ROUGE-1 | ROUGE-2 | ROUGE-L | ||||||
---|---|---|---|---|---|---|---|---|---|
dataset | Precision | Recall | Fscore | Precision | Recall | Fscore | Precision | Recall | Fscore |
cnc | 30.13 | 22.56 | 25.21 | 10.53 | 8.01 | 8.9 | 22.47 | 16.92 | 18.86 |
sumeczech- | 26.6 | 19.66 | 22.01 | 8.17 | 6.12 | 6.82 | 19.93 | 14.81 | 16.54 |
cnndm | 41.8 | 38.41 | 38.94 | 18.74 | 17.14 | 17.4 | 29.69 | 27.33 | 27.68 |
xsum | 38.27 | 33.62 | 35.16 | 14.39 | 12.69 | 13.25 | 30.77 | 27.05 | 28.29 |
mlsum-tu | 52.44 | 44.36 | 46.39 | 36.98 | 31.51 | 32.86 | 46.04 | 39.04 | 40.8 |
mlsum-de | 42.19 | 40.5 | 40.7 | 28.8 | 28.51 | 28.37 | 38.95 | 37.7 | 37.79 |
mlsum-fr | 34.57 | 27.74 | 29.95 | 16.27 | 13.04 | 14.08 | 27.18 | 21.89 | 23.6 |
mlsum-es | 30.93 | 26.41 | 27.66 | 11.42 | 9.85 | 10.28 | 25.12 | 21.59 | 22.55 |
mlsum-ru | 0.65 | 0.52 | 0.56 | 0.15 | 0.15 | 0.15 | 0.65 | 0.52 | 0.56 |
cnewsum | 25.14 | 26.56 | 24.45 | 6.89 | 7.54 | 6.78 | 24.77 | 26.15 | 24.08 |
USAGE
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