BHRAM-IL: A Benchmark for Hallucination Recognition and Assessment in Multiple Indian Languages

Abstract

Large language models (LLMs) are increasingly deployed in multilingual applications but often generate plausible yet incorrect or misleading outputs, known as hallucinations. While hallucination detection has been studied extensively in English, under-resourced Indian languages remain largely unexplored. We present BHRAM-IL, a benchmark for hallucination recognition and assessment in multiple Indian languages, covering Hindi, Gujarati, Marathi, Odia, along with English. The benchmark comprises 36,047 curated questions across nine categories spanning factual, numerical, reasoning, and linguistic tasks. We evaluate 14 state-of-the-art multilingual LLMs on a benchmark subset of 10,265 questions, analyzing cross-lingual and factual hallucinations across languages, models, scales, categories, and domains using category-specific metrics normalized to (0,1) range. Aggregation over all categories and models yields a primary score of 0.23 and a language-corrected fuzzy score of 0.385, demonstrating the usefulness of BHRAM-IL for hallucination-focused evaluation. The dataset, and the code for generation and evaluation are available on GitHub (https://github.com/sambhashana/BHRAM-IL/) and HuggingFace (https://huggingface.co/datasets/sambhashana/BHRAM-IL/) to support future research in multilingual hallucination detection and mitigation.

Publication
Proceedings of the 1st Workshop on BHASHA: Benchmarks, Harmonization, Annotation, and Standardization for Human-Centric AI in Indian Languages at the 14th International Joint Conference on NLP & Asia-Pacific Chapter of the Association for Computational Linguistics, December 2025
Hrishikesh Terdalkar
Hrishikesh Terdalkar
Assistant Professor

My research lies in the intersection of Computational Linguistics, Natural Language Processing, and Graph Databases with a particular emphasis on low-resource languages such as Sanskrit and other Indian languages. I am committed to pioneering innovations that have a real-world impact. My interests also include Artificial Intelligence, Databases, Human-Computer Interaction, Information Retrieval, and Data Mining.