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Dataset Card for CC-100
Dataset Summary
This corpus is an attempt to recreate the dataset used for training XLM-R. This corpus comprises of monolingual data for 100+ languages and also includes data for romanized languages (indicated by *_rom). This was constructed using the urls and paragraph indices provided by the CC-Net repository by processing January-December 2018 Commoncrawl snapshots.
Supported Tasks and Leaderboards
CC-100 is mainly intended to pretrain language models and word representations.
Languages
The languages in the dataset are:
- af: Afrikaans (305M)
- am: Amharic (133M)
- ar: Arabic (5.4G)
- as: Assamese (7.6M)
- az: Azerbaijani (1.3G)
- be: Belarusian (692M)
- bg: Bulgarian (9.3G)
- bn: Bengali (860M)
- bn_rom: Bengali Romanized (164M)
- br: Breton (21M)
- bs: Bosnian (18M)
- ca: Catalan (2.4G)
- cs: Czech (4.4G)
- cy: Welsh (179M)
- da: Danish (12G)
- de: German (18G)
- el: Greek (7.4G)
- en: English (82G)
- eo: Esperanto (250M)
- es: Spanish (14G)
- et: Estonian (1.7G)
- eu: Basque (488M)
- fa: Persian (20G)
- ff: Fulah (3.1M)
- fi: Finnish (15G)
- fr: French (14G)
- fy: Frisian (38M)
- ga: Irish (108M)
- gd: Scottish Gaelic (22M)
- gl: Galician (708M)
- gn: Guarani (1.5M)
- gu: Gujarati (242M)
- ha: Hausa (61M)
- he: Hebrew (6.1G)
- hi: Hindi (2.5G)
- hi_rom: Hindi Romanized (129M)
- hr: Croatian (5.7G)
- ht: Haitian (9.1M)
- hu: Hungarian (15G)
- hy: Armenian (776M)
- id: Indonesian (36G)
- ig: Igbo (6.6M)
- is: Icelandic (779M)
- it: Italian (7.8G)
- ja: Japanese (15G)
- jv: Javanese (37M)
- ka: Georgian (1.1G)
- kk: Kazakh (889M)
- km: Khmer (153M)
- kn: Kannada (360M)
- ko: Korean (14G)
- ku: Kurdish (90M)
- ky: Kyrgyz (173M)
- la: Latin (609M)
- lg: Ganda (7.3M)
- li: Limburgish (2.2M)
- ln: Lingala (2.3M)
- lo: Lao (63M)
- lt: Lithuanian (3.4G)
- lv: Latvian (2.1G)
- mg: Malagasy (29M)
- mk: Macedonian (706M)
- ml: Malayalam (831M)
- mn: Mongolian (397M)
- mr: Marathi (334M)
- ms: Malay (2.1G)
- my: Burmese (46M)
- my_zaw: Burmese (Zawgyi) (178M)
- ne: Nepali (393M)
- nl: Dutch (7.9G)
- no: Norwegian (13G)
- ns: Northern Sotho (1.8M)
- om: Oromo (11M)
- or: Oriya (56M)
- pa: Punjabi (90M)
- pl: Polish (12G)
- ps: Pashto (107M)
- pt: Portuguese (13G)
- qu: Quechua (1.5M)
- rm: Romansh (4.8M)
- ro: Romanian (16G)
- ru: Russian (46G)
- sa: Sanskrit (44M)
- sc: Sardinian (143K)
- sd: Sindhi (67M)
- si: Sinhala (452M)
- sk: Slovak (6.1G)
- sl: Slovenian (2.8G)
- so: Somali (78M)
- sq: Albanian (1.3G)
- sr: Serbian (1.5G)
- ss: Swati (86K)
- su: Sundanese (15M)
- sv: Swedish (21G)
- sw: Swahili (332M)
- ta: Tamil (1.3G)
- ta_rom: Tamil Romanized (68M)
- te: Telugu (536M)
- te_rom: Telugu Romanized (79M)
- th: Thai (8.7G)
- tl: Tagalog (701M)
- tn: Tswana (8.0M)
- tr: Turkish (5.4G)
- ug: Uyghur (46M)
- uk: Ukrainian (14G)
- ur: Urdu (884M)
- ur_rom: Urdu Romanized (141M)
- uz: Uzbek (155M)
- vi: Vietnamese (28G)
- wo: Wolof (3.6M)
- xh: Xhosa (25M)
- yi: Yiddish (51M)
- yo: Yoruba (1.1M)
- zh-Hans: Chinese (Simplified) (14G)
- zh-Hant: Chinese (Traditional) (5.3G)
- zu: Zulu (4.3M)
Dataset Structure
Data Instances
An example from the am
configuration:
{'id': '0', 'text': 'ተለዋዋጭ የግድግዳ አንግል ሙቅ አንቀሳቅሷል ቲ-አሞሌ አጥቅሼ ...\n'}
Each data point is a paragraph of text. The paragraphs are presented in the original (unshuffled) order. Documents are separated by a data point consisting of a single newline character.
Data Fields
The data fields are:
- id: id of the example
- text: content as a string
Data Splits
Sizes of some configurations:
name | train |
---|---|
am | 3124561 |
sr | 35747957 |
Dataset Creation
Curation Rationale
[More Information Needed]
Source Data
[More Information Needed]
Initial Data Collection and Normalization
[More Information Needed]
Who are the source language producers?
The data comes from multiple web pages in a large variety of languages.
Annotations
The dataset does not contain any additional annotations.
Annotation process
[N/A]
Who are the annotators?
[N/A]
Personal and Sensitive Information
Being constructed from Common Crawl, personal and sensitive information might be present. This must be considered before training deep learning models with CC-100, specially in the case of text-generation models.
Considerations for Using the Data
Social Impact of Dataset
[More Information Needed]
Discussion of Biases
[More Information Needed]
Other Known Limitations
[More Information Needed]
Additional Information
Dataset Curators
This dataset was prepared by Statistical Machine Translation at the University of Edinburgh using the CC-Net toolkit by Facebook Research.
Licensing Information
Statistical Machine Translation at the University of Edinburgh makes no claims of intellectual property on the work of preparation of the corpus. By using this, you are also bound by the Common Crawl terms of use in respect of the content contained in the dataset.
Citation Information
Please cite the following if you found the resources in this corpus useful:
@inproceedings{conneau-etal-2020-unsupervised,
title = "Unsupervised Cross-lingual Representation Learning at Scale",
author = "Conneau, Alexis and
Khandelwal, Kartikay and
Goyal, Naman and
Chaudhary, Vishrav and
Wenzek, Guillaume and
Guzm{\'a}n, Francisco and
Grave, Edouard and
Ott, Myle and
Zettlemoyer, Luke and
Stoyanov, Veselin",
editor = "Jurafsky, Dan and
Chai, Joyce and
Schluter, Natalie and
Tetreault, Joel",
booktitle = "Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics",
month = jul,
year = "2020",
address = "Online",
publisher = "Association for Computational Linguistics",
url = "https://aclanthology.org/2020.acl-main.747",
doi = "10.18653/v1/2020.acl-main.747",
pages = "8440--8451",
abstract = "This paper shows that pretraining multilingual language models at scale leads to significant performance gains for a wide range of cross-lingual transfer tasks. We train a Transformer-based masked language model on one hundred languages, using more than two terabytes of filtered CommonCrawl data. Our model, dubbed XLM-R, significantly outperforms multilingual BERT (mBERT) on a variety of cross-lingual benchmarks, including +14.6{\%} average accuracy on XNLI, +13{\%} average F1 score on MLQA, and +2.4{\%} F1 score on NER. XLM-R performs particularly well on low-resource languages, improving 15.7{\%} in XNLI accuracy for Swahili and 11.4{\%} for Urdu over previous XLM models. We also present a detailed empirical analysis of the key factors that are required to achieve these gains, including the trade-offs between (1) positive transfer and capacity dilution and (2) the performance of high and low resource languages at scale. Finally, we show, for the first time, the possibility of multilingual modeling without sacrificing per-language performance; XLM-R is very competitive with strong monolingual models on the GLUE and XNLI benchmarks. We will make our code and models publicly available.",
}
@inproceedings{wenzek-etal-2020-ccnet,
title = "{CCN}et: Extracting High Quality Monolingual Datasets from Web Crawl Data",
author = "Wenzek, Guillaume and
Lachaux, Marie-Anne and
Conneau, Alexis and
Chaudhary, Vishrav and
Guzm{\'a}n, Francisco and
Joulin, Armand and
Grave, Edouard",
editor = "Calzolari, Nicoletta and
B{\'e}chet, Fr{\'e}d{\'e}ric and
Blache, Philippe and
Choukri, Khalid and
Cieri, Christopher and
Declerck, Thierry and
Goggi, Sara and
Isahara, Hitoshi and
Maegaard, Bente and
Mariani, Joseph and
Mazo, H{\'e}l{\`e}ne and
Moreno, Asuncion and
Odijk, Jan and
Piperidis, Stelios",
booktitle = "Proceedings of the Twelfth Language Resources and Evaluation Conference",
month = may,
year = "2020",
address = "Marseille, France",
publisher = "European Language Resources Association",
url = "https://aclanthology.org/2020.lrec-1.494",
pages = "4003--4012",
abstract = "Pre-training text representations have led to significant improvements in many areas of natural language processing. The quality of these models benefits greatly from the size of the pretraining corpora as long as its quality is preserved. In this paper, we describe an automatic pipeline to extract massive high-quality monolingual datasets from Common Crawl for a variety of languages. Our pipeline follows the data processing introduced in fastText (Mikolov et al., 2017; Grave et al., 2018), that deduplicates documents and identifies their language. We augment this pipeline with a filtering step to select documents that are close to high quality corpora like Wikipedia.",
language = "English",
ISBN = "979-10-95546-34-4",
}
Contributions
Thanks to @abhishekkrthakur for adding this dataset.
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