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SEACrowd: A Multilingual Multimodal Data Hub and Benchmark Suite for Southeast Asian Languages

Holy Lovenia, Rahmad Mahendra, Salsabil Maulana Akbar, Lester James V. Miranda, Jennifer Santoso, Elyanah Aco, Akhdan Fadhilah, Jonibek Mansurov, Joseph Marvin Imperial, Onno P. Kampman, Joel Ruben Antony Moniz, Muhammad Ravi Shulthan Habibi, Frederikus Hudi, Railey Montalan, Ryan Ignatius, Joanito Agili Lopo, William Nixon, Börje F. Karlsson, James Jaya, Ryandito Diandaru, Yuze Gao, Patrick Amadeus, Bin Wang, Jan Christian Blaise Cruz, Chenxi Whitehouse, Ivan Halim Parmonangan, Maria Khelli, Wenyu Zhang, Lucky Susanto, Reynard Adha Ryanda, Sonny Lazuardi Hermawan, Dan John Velasco, Muhammad Dehan Al Kautsar, Willy Fitra Hendria, Yasmin Moslem, Noah Flynn, Muhammad Farid Adilazuarda, Haochen Li, Johanes Lee, R. Damanhuri, Shuo Sun, Muhammad Reza Qorib, Amirbek Djanibekov, Wei Qi Leong, Quyet V. Do, Niklas Muennighoff, Tanrada Pansuwan, Ilham Firdausi Putra, Yan Xu, Ngee Chia Tai, Ayu Purwarianti, Sebastian Ruder, William Tjhi, Peerat Limkonchotiwat, Alham Fikri Aji, Sedrick Keh, Genta Indra Winata, Ruochen Zhang, Fajri Koto, Zheng-Xin Yong, Samuel Cahyawijaya

TL;DR

SEACrowd tackles the critical resource and evaluation gaps for Southeast Asian languages by building a centralized, open, multilingual, multimodal hub and benchmark suite. It consolidates and standardizes thousands of SEA-language datasets through datasheets and dataloaders, enabling cross-modal evaluation across text, image, and audio for hundreds of languages. Benchmark results reveal strong performance for SEA-focused LLMs in zero-shot tasks but pervasive translationese effects and significant underrepresentation in speech and vision modalities, highlighting the need for multilingual pretraining and culturally aware data. The work underscores practical pathways toward utility and equity in SEA AI, calling for regional collaboration, open data stewardship, and targeted resource development for national languages and local dialects. SEACrowd thus provides both a concrete dataset/resource infrastructure and a diagnostic of current model limitations with a roadmap for more inclusive AI in Southeast Asia.

Abstract

Southeast Asia (SEA) is a region rich in linguistic diversity and cultural variety, with over 1,300 indigenous languages and a population of 671 million people. However, prevailing AI models suffer from a significant lack of representation of texts, images, and audio datasets from SEA, compromising the quality of AI models for SEA languages. Evaluating models for SEA languages is challenging due to the scarcity of high-quality datasets, compounded by the dominance of English training data, raising concerns about potential cultural misrepresentation. To address these challenges, we introduce SEACrowd, a collaborative initiative that consolidates a comprehensive resource hub that fills the resource gap by providing standardized corpora in nearly 1,000 SEA languages across three modalities. Through our SEACrowd benchmarks, we assess the quality of AI models on 36 indigenous languages across 13 tasks, offering valuable insights into the current AI landscape in SEA. Furthermore, we propose strategies to facilitate greater AI advancements, maximizing potential utility and resource equity for the future of AI in SEA.

SEACrowd: A Multilingual Multimodal Data Hub and Benchmark Suite for Southeast Asian Languages

TL;DR

SEACrowd tackles the critical resource and evaluation gaps for Southeast Asian languages by building a centralized, open, multilingual, multimodal hub and benchmark suite. It consolidates and standardizes thousands of SEA-language datasets through datasheets and dataloaders, enabling cross-modal evaluation across text, image, and audio for hundreds of languages. Benchmark results reveal strong performance for SEA-focused LLMs in zero-shot tasks but pervasive translationese effects and significant underrepresentation in speech and vision modalities, highlighting the need for multilingual pretraining and culturally aware data. The work underscores practical pathways toward utility and equity in SEA AI, calling for regional collaboration, open data stewardship, and targeted resource development for national languages and local dialects. SEACrowd thus provides both a concrete dataset/resource infrastructure and a diagnostic of current model limitations with a roadmap for more inclusive AI in Southeast Asia.

Abstract

Southeast Asia (SEA) is a region rich in linguistic diversity and cultural variety, with over 1,300 indigenous languages and a population of 671 million people. However, prevailing AI models suffer from a significant lack of representation of texts, images, and audio datasets from SEA, compromising the quality of AI models for SEA languages. Evaluating models for SEA languages is challenging due to the scarcity of high-quality datasets, compounded by the dominance of English training data, raising concerns about potential cultural misrepresentation. To address these challenges, we introduce SEACrowd, a collaborative initiative that consolidates a comprehensive resource hub that fills the resource gap by providing standardized corpora in nearly 1,000 SEA languages across three modalities. Through our SEACrowd benchmarks, we assess the quality of AI models on 36 indigenous languages across 13 tasks, offering valuable insights into the current AI landscape in SEA. Furthermore, we propose strategies to facilitate greater AI advancements, maximizing potential utility and resource equity for the future of AI in SEA.
Paper Structure (69 sections, 11 figures, 48 tables)

This paper contains 69 sections, 11 figures, 48 tables.

Figures (11)

  • Figure 1: Mapping between tasks, schemas, modalities, and language regions across 498 datasheets in SEACrowd.
  • Figure 2: Zero-shot model performance across NLU and NLG tasks in SEA languages.
  • Figure 3: Speech model error rate (%$\downarrow$) across existing ASR tasks in SEA languages.
  • Figure 4: Existing VLMs produce subpar image captions in SEA languages. We report CIDEr vedantam2015cider.
  • Figure 5: The resource gap in SEA in terms of language coverage, annotation quality, and cultural relevance.
  • ...and 6 more figures