Pedro Ortiz Suarez, Laurie Burchell, Catherine Arnett, Rafael Mosquera, Sara Hincapié Monsalve, Thom Vaughan, Damian Stewart, Malte Ostendorff, Idris Abdulmumin, Vukosi Marivate, Shamsuddeen Hassan Muhammad, Atnafu Lambebo Tonja, Hend Al-Khalifa, Nadia Ghezaiel Hammouda, Verrah Akinyi Otiende, Tack Hwa Wong, Jakhongir Saydaliev, Melika Nobakhtian, Muhammad Ravi Shulthan Habibi, Chalamalasetti Kranti, Carol Muchemi, Khang Nguyen, Faisal Muhammad Adam, Luis Frentzen Salim, Reem Alqifari, Cynthia Jayne Amol, Joseph Marvin Imperial, Ilker Kesen, Ahmad Mustafid, Pavel Stepachev, Leshem Choshen, David Anugraha, Hamada Nayel, Seid Muhie Yimam, Vallerie Alexandra Putra, My Chiffon Nguyen, Azmine Toushik Wasi, Gouthami Vadithya, Rob Van Der Goot, Lanwenn ar C’horr, Karan Dua, Andrew Yates, Mithil Bangera, Yeshil Bangera, Hitesh Laxmichand Patel, Shu Okabe, Fenal Ashokbhai Ilasariya, Dmitry Gaynullin, Genta Indra Winata, Yiyuan Li, Juan Pablo Martínez, Amit Agarwal, Ikhlasul Akmal Hanif, Raia Abu Ahmad, Esther Adenuga, Filbert Aurelian Tjiaranata, Weerayut Buaphet, Michael Anugraha, Sowmya Vajjala, Benjamin L Rice, Azril Hafizi Amirudin, Jesujoba Oluwadara Alabi, Srikant Panda, Yassine Toughrai, Bruhan Kyomuhendo, Daniel Ruffinelli, null Akshata, Manuel Goulão, Ej Zhou, Ingrid Gabriela Franco Ramirez, Cristina Aggazzotti, Konstantin Dobler, Jun Kevin, Quentin Pagès, Nicholas Andrews, Nuhu Ibrahim, Mattes Ruckdeschel, Amr Keleg, Mike Zhang, Casper Rufaro Muziri, Saron Samuel, Sotaro Takeshita, Kun Kerdthaisong, Luca Foppiano, Rasul Dent, Tommaso Green, Ahmad Mustapha Wali, Kamohelo Makaaka, Vicky Feliren, Inshirah Idris, Hande Celikkanat, Abdulhamid Abubakar, Jean Maillard, Benoît Sagot, Thibault Clérice, Kenton Murray, Sarah K. K. Luger
Challenge: Language identification (LID) is a fundamental step in curating multilingual corpora.
Approach: They introduce CommonLID, a community-driven, human-annotated LID benchmark for the web domain, covering 109 languages.
Outcome: The proposed benchmark covers 109 languages and shows that existing evaluations overestimate accuracy for many languages in the web domain.

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An Open Dataset and Model for Language Identification (2023.acl-short)

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Challenge: Existing LID systems perform poorly on low-resource languages, causing 'representation washing', where the community is given a false view of the actual progress of low-source NLP.
Approach: They propose a model which achieves a macro-average F1 score of 0.93 and a false positive rate of 0.033% across 201 languages, outperforming previous work.
Outcome: The proposed model outperforms existing models and datasets on 201 languages and a false positive rate of 0.033%.
GlotLID: Language Identification for Low-Resource Languages (2023.findings-emnlp)

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Challenge: Existing web-mined datasets for low-resource languages have been useful for low resource NLP.
Approach: They propose a model that identifies 1665 low-resource languages and a new model that is rigorously evaluated and reliable.
Outcome: The proposed model outperforms baselines when balancing F1 and false positive rate (FPR).
AfroLID: A Neural Language Identification Tool for African Languages (2022.emnlp-main)

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Challenge: AfroLID is a neural LID toolkit for 517 African languages and varieties.
Approach: They propose to exploit a multi-domain web dataset manually curated from across 14 language families utilizing five orthographic systems to exploit AfroLID.
Outcome: The proposed tool outperforms existing tools on the acutely under-served Twitter domain.
Language ID in the Wild: Unexpected Challenges on the Path to a Thousand-Language Web Text Corpus (2020.coling-main)

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Challenge: Large text corpora are increasingly important for a wide variety of NLP tasks.
Approach: They propose to train automatic language identification models on up to 1,629 languages . they find that human-judged accuracy for web-crawl text corpora is only around 5% for many lower-resource languages.
Outcome: The proposed models achieve over 90% average F1 on 1,629 languages . human-judged accuracy for web-crawl text corpora is only around 5% for many lower-resource languages - suggesting a need for more robust evaluation.
EIFFEL: a novel benchmark to measure bias of English heavy training on French idiomatic expressions (2026.acl-long)

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Challenge: Mainstream multilingual models are generally trained on a much higher proportion of English data . this raises questions about their ability to capture linguistic features specific to non-English languages .
Approach: They propose a benchmark to test multilingual LLMs' ability to capture linguistic features in other languages.
Outcome: The proposed benchmark shows that multilingual models can capture features in non-English languages and cultural norms.
GlotEval: A Test Suite for Massively Multilingual Evaluation of Large Language Models (2025.emnlp-demos)

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Challenge: Existing evaluation frameworks focus on English and a handful of high-resource languages, thereby overlooking the realistic performance of large language models in multilingual and lower-resourced scenarios.
Approach: They propose a unified and lightweight framework that integrates 27 benchmarks under a standard ISO 639-3 language identifier system to enable seamless incorporation of new benchmarks.
Outcome: The proposed framework integrates 27 benchmarks under a standard ISO 639-3 language identifier system, allowing for seamless incorporation of new benchmarks.
Identifying Open Challenges in Language Identification (2025.acl-long)

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Challenge: Existing work on language identification has focused on cross-domain setups, but no systematic comparison is available.
Approach: They propose to train an accurate multi-domain languageidentification model on 2,034 languages and analyze the remaining errors.
Outcome: The proposed model performs well on 2,034 languages with training with 1,000 instances per language and a maximum input length of 100 characters.
A New Massive Multilingual Dataset for High-Performance Language Technologies (2024.lrec-main)

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Challenge: a new massive multilingual dataset is available for language modeling and machine translation training.
Approach: They present a massive multilingual dataset using web crawls from the Internet Archive and CommonCrawl . they use open-source software tools and high-performance computing to acquire, manage and process large corpora .
Outcome: The HPLT language resources is a massive multilingual dataset . it includes monolingual and bilingual corpora extracted from CommonCrawl and the Internet Archive . the results are published online at the journal journal cense4 .
BenchMAX: A Comprehensive Multilingual Evaluation Suite for Large Language Models (2025.findings-emnlp)

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Challenge: Existing multilingual benchmarks focus primarily on language understanding tasks.
Approach: They develop a multi-way multilingual benchmark that measures critical capabilities of large language models across languages.
Outcome: Extensive experiments on BenchMAX reveal uneven utilization of core capabilities across languages, emphasizing the performance gaps that scaling model size alone does not resolve.

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