Rajat Verma
2026
Multilingual Tokenization through the Lens of Indian Languages: Challenges and Insights
Maharaj Brahma | N J Karthika | Rajat Verma | Nagasai Saketh Naidu | Rohit Saluja | Maunendra Sankar Desarkar | Ganesh Ramakrishnan
Findings of the Association for Computational Linguistics: ACL 2026
Maharaj Brahma | N J Karthika | Rajat Verma | Nagasai Saketh Naidu | Rohit Saluja | Maunendra Sankar Desarkar | Ganesh Ramakrishnan
Findings of the Association for Computational Linguistics: ACL 2026
Tokenization plays a pivotal role in NLP and is fundamental to training language models. However, existing tokenizers are often skewed towards high-resource languages, limiting their effectiveness for linguistically diverse and morphologically rich languages such as those in the Indian subcontinent. In this work, we present a comprehensive empirical study of multilingual tokenization across 17 Indic languages spanning 11 scripts and two language families. We systematically evaluate the effects of (i) widely used subword algorithms: BPE (CITATION) and Unigram LM (CITATION), (ii) script and orthography-aware normalization, (iii) vocabulary size, and (iv) multilingual vocabulary construction strategies. We use a combination of intrinsic and extrinsic evaluations to obtain the following observations: (i) script-specific normalization improves tokenization quality, (ii) Unigram LM better preserves morphological boundaries than BPE, (iii) cluster-based vocabulary construction shows improvement in downstream tasks compared to the joint method. Our findings highlight the importance of linguistically informed design choices in multilingual tokenization and offer practical guidance for building effective tokenizers for low-resource and morphologically complex languages.
2025
AnciDev: A Dataset for High-Accuracy Handwritten Text Recognition of Ancient Devanagari Manuscripts
Vriti Sharma | Rajat Verma | Rohit Saluja
Proceedings of the 1st Workshop on Benchmarks, Harmonization, Annotation, and Standardization for Human-Centric AI in Indian Languages (BHASHA 2025)
Vriti Sharma | Rajat Verma | Rohit Saluja
Proceedings of the 1st Workshop on Benchmarks, Harmonization, Annotation, and Standardization for Human-Centric AI in Indian Languages (BHASHA 2025)
The digital preservation and accessibility of historical documents require accurate and scalable Handwritten Text Recognition (HTR). However, progress in this field is significantly hampered for low-resource scripts, such as ancient forms of the scripts used in historical manuscripts, due to the scarcity of high-quality, transcribed training data. We address this critical gap by introducing the AnciDev Dataset, a novel, publicly available resource comprising 3,000 transcribed text lines sourced from 500 pages of different ancient Devanagari manuscripts. To validate the utility of this new resource, we systematically evaluate and fine-tune several HTR models on the AnciDev Dataset. Our experiments demonstrate a significant performance uplift across all fine-tuned models, with the best-performing architecture achieving a substantial reduction in Character Error Rate (CER), confirming the dataset’s efficacy in addressing the unique complexities of ancient handwriting. This work not only provides a crucial, well-curated dataset to the research community but also sets a new, reproducible state-of-the-art for the HTR of historical Devanagari, advancing the effort to digitally preserve India’s documentary heritage.
TEEMIL : Towards Educational MCQ Difficulty Estimation in Indic Languages
Manikandan Ravikiran | Siddharth Vohra | Rajat Verma | Rohit Saluja | Arnav Bhavsar
Proceedings of the 31st International Conference on Computational Linguistics
Manikandan Ravikiran | Siddharth Vohra | Rajat Verma | Rohit Saluja | Arnav Bhavsar
Proceedings of the 31st International Conference on Computational Linguistics
Difficulty estimation of multiple-choice questions (MCQs) is crucial for creating effective educational assessments, yet remains underexplored in Indic languages like Hindi and Kannada due to the lack of comprehensive datasets. This paper addresses this gap by introducing two datasets, TEEMIL-H and TEEMIL-K, containing 4689 and 4215 MCQs, respectively, with manually annotated difficulty labels. We benchmark these datasets using state-of-the-art multilingual models and conduct ablation studies to analyze the effect of context, the impact of options, and the presence of the None of the Above (NOTA) option on difficulty estimation. Our findings establish baselines for difficulty estimation in Hindi and Kannada, offering valuable insights into improving model performance and guiding future research in MCQ difficulty estimation .