Raising Bars, Not Parameters: {LilMoo} Compact Language Model for Hindi

The dominance of large multilingual foundation models has widened linguistic inequalities in Natural Language Processing ({NLP}), often leaving low-resource languages underrepresented. This paper introduces {LilMoo}, a 0.6-billion-parameter Hindi language model trained entirely from scratch to address this gap. Unlike prior Hindi models that rely on continual pretraining from opaque multilingual foundations, {LilMoo} is developed through a fully transparent and reproducible pipeline optimized for limited compute environments. We construct a high-quality Hindi corpus ({GigaLekh}) filtered through both heuristic and learned ({LLM}-as-a-judge) methods, complemented by bilingual augmentation with curated English data. Using this dataset, we explore various training recipes for small-scale language models. Across comprehensive evaluation suites, {LilMoo} consistently outperforms comparably sized multilingual baselines such as Qwen2.5-0.5B and Qwen3-0.6B, demonstrating that well-designed language-specific pretraining can rival large multilingual models at the sub-billion-parameter range.

  • Veröffentlicht in:
    arXiv
  • Typ:
    Article
  • Autoren:
    Fatimah, Shiza; Sen, Aniket; Falk, Sophia; Mai, Florian; Flek, Lucie; Corrêa, Nicholas Kluge
  • Jahr:
    2026
  • Source:
    http://arxiv.org/abs/2603.03508

Informationen zur Zitierung

Fatimah, Shiza; Sen, Aniket; Falk, Sophia; Mai, Florian; Flek, Lucie; Corrêa, Nicholas Kluge: Raising Bars, Not Parameters: {LilMoo} Compact Language Model for Hindi, arXiv, 2026, {arXiv}:2603.03508, March, {arXiv}, http://arxiv.org/abs/2603.03508, Fatimah.etal.2026a,

Assoziierte Lamarr-ForscherInnen

Prof. Dr. Lucie Flek

Prof. Dr. Lucie Flek

Area Chair NLP zum Profil
Photo. Portrait of Florian Mai.

Dr. Florian Mai

Scientific Coordinator NLP zum Profil