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A Appendix

Neural Information Processing Systems

The complete list may be seen in Table 8. Here are a few general notes about these strings: 1. Based on their recommendations, we did the following: 1. zh, zh_Latn: This resulted in the special filters described below. URLs) the corpora were in languages different from the LangID predictions. This is mainly mis-rendered PDFs and may have practical applications for denoising, or for decoding such garbled PDFs.


Massively Multilingual Adaptation of Large Language Models Using Bilingual Translation Data

Ji, Shaoxiong, Li, Zihao, Paavola, Jaakko, Luo, Hengyu, Tiedemann, Jörg

arXiv.org Artificial Intelligence

This paper investigates a critical design decision in the practice of massively multilingual continual pre-training -- the inclusion of parallel data. Specifically, we study the impact of bilingual translation data for massively multilingual language adaptation of the Llama3 family of models to 500 languages. To this end, we construct the MaLA bilingual translation corpus, containing data from more than 2,500 language pairs. Subsequently, we develop the EMMA-500 Llama 3 suite of four massively multilingual models -- continually pre-trained from the Llama 3 family of base models extensively on diverse data mixes up to 671B tokens -- and explore the effect of continual pre-training with or without bilingual translation data. Comprehensive evaluation across 7 tasks and 12 benchmarks demonstrates that bilingual data tends to enhance language transfer and performance, particularly for low-resource languages. We open-source the MaLA corpus, EMMA-500 Llama 3 suite artefacts, code, and model generations.



Global PIQA: Evaluating Physical Commonsense Reasoning Across 100+ Languages and Cultures

Chang, Tyler A., Arnett, Catherine, Eldesokey, Abdelrahman, Sadallah, Abdelrahman, Kashar, Abeer, Daud, Abolade, Olanihun, Abosede Grace, Mohammed, Adamu Labaran, Praise, Adeyemi, Sharma, Adhikarinayum Meerajita, Gupta, Aditi, Iyigun, Afitab, Simplício, Afonso, Essouaied, Ahmed, Chorana, Aicha, Eppa, Akhil, Oladipo, Akintunde, Ramesh, Akshay, Dorkin, Aleksei, Kondoro, Alfred Malengo, Aji, Alham Fikri, Çetintaş, Ali Eren, Hanbury, Allan, Dembele, Alou, Niksarli, Alp, Arroyo, Álvaro, Bajand, Amin, Khanna, Amol, Chkhaidze, Ana, Condez, Ana, Mkhonto, Andiswa, Hoblitzell, Andrew, Tran, Andrew, Poulis, Angelos, Majumder, Anirban, Vacalopoulou, Anna, Wong, Annette Kuuipolani Kanahele, Simonsen, Annika, Kovalev, Anton, S, Ashvanth., Lana, Ayodeji Joseph, Kinay, Barkin, Alhafni, Bashar, Busole, Benedict Cibalinda, Ghanem, Bernard, Nathani, Bharti, Đurić, Biljana Stojanovska, Agbonile, Bola, Bergsson, Bragi, Fischer, Bruce Torres, Tutar, Burak, Çınar, Burcu Alakuş, Kane, Cade J. Kanoniakapueo, Udomcharoenchaikit, Can, Arnett, Catherine, Helwe, Chadi, Nerella, Chaithra Reddy, Liu, Chen Cecilia, Nwokolo, Chiamaka Glory, España-Bonet, Cristina, Amol, Cynthia, Lee, DaeYeop, Arad, Dana, Dzenhaliou, Daniil, Pugacheva, Daria, Choi, Dasol, Abolade, Daud, Liu, David, Semedo, David, Popoola, Deborah, Mataciunas, Deividas, Nyaboke, Delphine, Kumar, Dhyuthy Krishna, Glória-Silva, Diogo, Tavares, Diogo, Goyal, Divyanshu, Lee, DongGeon, Anajemba, Ebele Nwamaka, Grace, Egonu Ngozi, Mickel, Elena, Tutubalina, Elena, Herranen, Elias, Anand, Emile, Habumuremyi, Emmanuel, Ajiboye, Emuobonuvie Maria, Yulianrifat, Eryawan Presma, Adenuga, Esther, Rudnicka, Ewa, Itiola, Faith Olabisi, Butt, Faran Taimoor, Thekkekara, Fathima, Haouari, Fatima, Tjiaranata, Filbert Aurelian, Laakom, Firas, Grasso, Francesca, Orabona, Francesco, Periti, Francesco, Solomon, Gbenga Kayode, Ngo, Gia Nghia, Udhehdhe-oze, Gloria, Martins, Gonçalo, Challagolla, Gopi Naga Sai Ram, Son, Guijin, Abdykadyrova, Gulnaz, Einarsson, Hafsteinn, Hu, Hai, Saffari, Hamidreza, Zaidi, Hamza, Zhang, Haopeng, Shairah, Harethah Abu, Vuong, Harry, Kuulmets, Hele-Andra, Bouamor, Houda, Yu, Hwanjo, Debess, Iben Nyholm, Deveci, İbrahim Ethem, Hanif, Ikhlasul Akmal, Cho, Ikhyun, Calvo, Inês, Vieira, Inês, Manzi, Isaac, Daud, Ismail, Itzhak, Itay, Iuliia, null, Alekseenko, null, Belashkin, Ivan, Spada, Ivan, Zhelyazkov, Ivan, Brinton, Jacob, Isbarov, Jafar, Čibej, Jaka, Čuhel, Jan, Kocoń, Jan, Krito, Jauza Akbar, Purbey, Jebish, Mickel, Jennifer, Za, Jennifer, Kunz, Jenny, Jeong, Jihae, Dávalos, Jimena Tena, Lee, Jinu, Magalhães, João, Yi, John, Kim, Jongin, Chataignon, Joseph, Imperial, Joseph Marvin, Thevakumar, Jubeerathan, Land, Judith, Jiang, Junchen, Kim, Jungwhan, Sirts, Kairit, R, Kamesh, V, Kamesh, Tshinu, Kanda Patrick, Kukk, Kätriin, Ponkshe, Kaustubh, Huseynova, Kavsar, He, Ke, Buchanan, Kelly, Sarveswaran, Kengatharaiyer, Zaman, Kerem, Mrini, Khalil, Kyars, Kian, Kruusmaa, Krister, Chouhan, Kusum, Krishnakumar, Lainitha, Sánchez, Laura Castro, Moscoso, Laura Porrino, Choshen, Leshem, Sencan, Levent, Øvrelid, Lilja, Alazraki, Lisa, Ehimen-Ugbede, Lovina, Thevakumar, Luheerathan, Thavarasa, Luxshan, Malik, Mahnoor, Keita, Mamadou K., Jangid, Mansi, De Santis, Marco, García, Marcos, Suppa, Marek, D'Ciofalo, Mariam, Ojastu, Marii, Sikander, Maryam, Narayan, Mausami, Skandalis, Maximos, Mehak, Mehak, Bozkurt, Mehmet İlteriş, Workie, Melaku Bayu, Velayuthan, Menan, Leventhal, Michael, Marcińczuk, Michał, Potočnjak, Mirna, Shafiei, Mohammadamin, Sharma, Mridul, Indoria, Mrityunjaya, Habibi, Muhammad Ravi Shulthan, Kolić, Murat, Galant, Nada, Permpredanun, Naphat, Maugin, Narada, Corrêa, Nicholas Kluge, Ljubešić, Nikola, Thomas, Nirmal, de Silva, Nisansa, Joshi, Nisheeth, Ponkshe, Nitish, Habash, Nizar, Udeze, Nneoma C., Thomas, Noel, Ligeti-Nagy, Noémi, Coulibaly, Nouhoum, Faustin, Nsengiyumva, Buliaminu, Odunayo Kareemat, Ogundepo, Odunayo, Fejiro, Oghojafor Godswill, Funmilola, Ogundipe Blessing, God'spraise, Okechukwu, Samuel, Olanrewaju, Oluwaseun, Olaoye Deborah, Akindejoye, Olasoji, Popova, Olga, Snissarenko, Olga, Chiemezie, Onyinye Anulika, Kinay, Orkun, Tursun, Osman, Moses, Owoeye Tobiloba, Joshua, Oyelade Oluwafemi, Fiyinfoluwa, Oyesanmi, Gamallo, Pablo, Fernández, Pablo Rodríguez, Arora, Palak, Valente, Pedro, Rupnik, Peter, Ekiugbo, Philip Oghenesuowho, Sahoo, Pramit, Prokopidis, Prokopis, Niau-Puhipau, Pua, Yahya, Quadri, Mignone, Rachele, Singhal, Raghav, Kadiyala, Ram Mohan Rao, Merx, Raphael, Afolayan, Rapheal, Rajalakshmi, Ratnavel, Ghosh, Rishav, Oji, Romina, Solis, Ron Kekeha, Guerra, Rui, Zawar, Rushikesh, Bashir, Sa'ad Nasir, Alzaabi, Saeed, Sandeep, Sahil, Batchu, Sai Pavan, Kantareddy, SaiSandeep, Pranida, Salsabila Zahirah, Buchanan, Sam, Rutunda, Samuel, Land, Sander, Sulollari, Sarah, Ali, Sardar, Sapkota, Saroj, Tautvaisas, Saulius, Sen, Sayambhu, Banerjee, Sayantani, Diarra, Sebastien, M, SenthilNathan., Lee, Sewoong, Shah, Shaan, Venkitachalam, Shankar, Djurabaeva, Sharifa, Ibejih, Sharon, Dutta, Shivanya Shomir, Gupta, Siddhant, Suárez, Silvia Paniagua, Ahmadi, Sina, Sukumar, Sivasuthan, Song, Siyuan, A., Snegha, Sofianopoulos, Sokratis, Simon, Sona Elza, Benčina, Sonja, Gvasalia, Sophie, More, Sphurti Kirit, Dragazis, Spyros, Kaufhold, Stephan P., S, Suba., AlRashed, Sultan, Ranathunga, Surangika, Someya, Taiga, Pungeršek, Taja Kuzman, Haklay, Tal, Jibril, Tasi'u, Aoyama, Tatsuya, Abashidze, Tea, Cruz, Terenz Jomar Dela, Blevins, Terra, Nikas, Themistoklis, Idoko, Theresa Dora, Do, Thu Mai, Chubakov, Tilek, Gargiani, Tommaso, Rathore, Uma, Johannesen, Uni, Ugwu, Uwuma Doris, Putra, Vallerie Alexandra, Kumar, Vanya Bannihatti, Jeyarajalingam, Varsha, Arzt, Varvara, Nedumpozhimana, Vasudevan, Ondrejova, Viktoria, Horbik, Viktoryia, Kummitha, Vishnu Vardhan Reddy, Dinić, Vuk, Sewunetie, Walelign Tewabe, Wu, Winston, Zhao, Xiaojing, Diarra, Yacouba, Nikankin, Yaniv, Mathur, Yash, Chen, Yixi, Li, Yiyuan, Xavier, Yolanda, Belinkov, Yonatan, Abayomi, Yusuf Ismail, Alyafeai, Zaid, Shan, Zhengyang, Tam, Zhi Rui, Tang, Zilu, Nadova, Zuzana, Abbasi, Baber, Biderman, Stella, Stap, David, Ataman, Duygu, Schmidt, Fabian, Gonen, Hila, Wang, Jiayi, Adelani, David Ifeoluwa

arXiv.org Artificial Intelligence

To date, there exist almost no culturally-specific evaluation benchmarks for large language models (LLMs) that cover a large number of languages and cultures. In this paper, we present Global PIQA, a participatory commonsense reasoning benchmark for over 100 languages, constructed by hand by 335 researchers from 65 countries around the world. The 116 language varieties in Global PIQA cover five continents, 14 language families, and 23 writing systems. In the non-parallel split of Global PIQA, over 50% of examples reference local foods, customs, traditions, or other culturally-specific elements. We find that state-of-the-art LLMs perform well on Global PIQA in aggregate, but they exhibit weaker performance in lower-resource languages (up to a 37% accuracy gap, despite random chance at 50%). Open models generally perform worse than proprietary models. Global PIQA highlights that in many languages and cultures, everyday knowledge remains an area for improvement, alongside more widely-discussed capabilities such as complex reasoning and expert knowledge. Beyond its uses for LLM evaluation, we hope that Global PIQA provides a glimpse into the wide diversity of cultures in which human language is embedded.


A Appendix A.1 LangID Details

Neural Information Processing Systems

The complete list may be seen in Table 8. Here are a few general notes about these strings: 1. Based on their recommendations, we did the following: 1. zh, zh_Latn: This resulted in the special filters described below. URLs) the corpora were in languages different from the LangID predictions. This is mainly mis-rendered PDFs and may have practical applications for denoising, or for decoding such garbled PDFs.



Tracing Multilingual Factual Knowledge Acquisition in Pretraining

Liu, Yihong, Wang, Mingyang, Kargaran, Amir Hossein, Körner, Felicia, Nie, Ercong, Plank, Barbara, Yvon, François, Schütze, Hinrich

arXiv.org Artificial Intelligence

Large Language Models (LLMs) are capable of recalling multilingual factual knowledge present in their pretraining data. However, most studies evaluate only the final model, leaving the development of factual recall and crosslingual consistency throughout pretraining largely unexplored. In this work, we trace how factual recall and crosslingual consistency evolve during pretraining, focusing on OLMo-7B as a case study. We find that both accuracy and consistency improve over time for most languages. We show that this improvement is primarily driven by the fact frequency in the pretraining corpus: more frequent facts are more likely to be recalled correctly, regardless of language. Yet, some low-frequency facts in non-English languages can still be correctly recalled. Our analysis reveals that these instances largely benefit from crosslingual transfer of their English counterparts -- an effect that emerges predominantly in the early stages of pretraining. We pinpoint two distinct pathways through which multilingual factual knowledge acquisition occurs: (1) frequency-driven learning, which is dominant and language-agnostic, and (2) crosslingual transfer, which is limited in scale and typically constrained to relation types involving named entities. We release our code and data to facilitate further research at https://github.com/cisnlp/multilingual-fact-tracing.


Tokenization and Representation Biases in Multilingual Models on Dialectal NLP Tasks

Kanjirangat, Vani, Samardžić, Tanja, Dolamic, Ljiljana, Rinaldi, Fabio

arXiv.org Artificial Intelligence

Dialectal data are characterized by linguistic variation that appears small to humans but has a significant impact on the performance of models. This dialect gap has been related to various factors (e.g., data size, economic and social factors) whose impact, however, turns out to be inconsistent. In this work, we investigate factors impacting the model performance more directly: we correlate Tokenization Parity (TP) and Information Parity (IP), as measures of representational biases in pre-trained multilingual models, with the downstream performance. We compare state-of-the-art decoder-only LLMs with encoder-based models across three tasks: dialect classification, topic classification, and extractive question answering, controlling for varying scripts (Latin vs. non-Latin) and resource availability (high vs. low). Our analysis reveals that TP is a better predictor of the performance on tasks reliant on syntactic and morphological cues (e.g., extractive QA), while IP better predicts performance in semantic tasks (e.g., topic classification). Complementary analyses, including tokenizer behavior, vocabulary coverage, and qualitative insights, reveal that the language support claims of LLMs often might mask deeper mismatches at the script or token level.


From Neurons to Semantics: Evaluating Cross-Linguistic Alignment Capabilities of Large Language Models via Neurons Alignment

Huang, Chongxuan, Ye, Yongshi, Fu, Biao, Su, Qifeng, Shi, Xiaodong

arXiv.org Artificial Intelligence

Large language models (LLMs) have demonstrated remarkable multilingual capabilities, however, how to evaluate cross-lingual alignment remains underexplored. Existing alignment benchmarks primarily focus on sentence embeddings, but prior research has shown that neural models tend to induce a non-smooth representation space, which impact of semantic alignment evaluation on low-resource languages. Inspired by neuroscientific findings that similar information activates overlapping neuronal regions, we propose a novel Neuron State-Based Cross-Lingual Alignment (NeuronXA) to assess the cross-lingual a lignment capabilities of LLMs, which offers a more semantically grounded approach to assess cross-lingual alignment. We evaluate NeuronXA on several prominent multilingual LLMs (LLaMA, Qwen, Mistral, GLM, and OLMo) across two transfer tasks and three multilingual benchmarks. The results demonstrate that with only 100 parallel sentence pairs, NeuronXA achieves a Pearson correlation of 0.9556 with downstream tasks performance and 0.8514 with transferability. These findings demonstrate NeuronXA's effectiveness in assessing both cross-lingual alignment and transferability, even with a small dataset. This highlights its potential to advance cross-lingual alignment research and to improve the semantic understanding of multilingual LLMs.


HYPEROFA: Expanding LLM Vocabulary to New Languages via Hypernetwork-Based Embedding Initialization

Özeren, Enes, Liu, Yihong, Schütze, Hinrich

arXiv.org Artificial Intelligence

Many pre-trained language models (PLMs) exhibit suboptimal performance on mid- and low-resource languages, largely due to limited exposure to these languages during pre-training. A common strategy to address this is to introduce new tokens specific to the target languages, initialize their embeddings, and apply continual pre-training on target-language data. Among such methods, OFA (Liu et al., 2024a) proposes a similarity-based subword embedding initialization heuristic that is both effective and efficient. However, OFA restricts target-language token embeddings to be convex combinations of a fixed number of source-language embeddings, which may limit expressiveness. To overcome this limitation, we propose HYPEROFA, a hypernetwork-based approach for more adaptive token embedding initialization. The hypernetwork is trained to map from an external multilingual word vector space to the PLMs token embedding space using source-language tokens. Once trained, it can generate flexible embeddings for target-language tokens, serving as a good starting point for continual pretraining. Experiments demonstrate that HYPEROFA consistently outperforms random initialization baseline and matches or exceeds the performance of OFA in both continual pre-training convergence and downstream task performance. We make the code publicly available.