English

Comparative Study of Pre-Trained BERT and Large Language Models for Code-Mixed Named Entity Recognition

Computation and Language 2025-09-03 v1 Machine Learning

Abstract

Named Entity Recognition (NER) in code-mixed text, particularly Hindi-English (Hinglish), presents unique challenges due to informal structure, transliteration, and frequent language switching. This study conducts a comparative evaluation of code-mixed fine-tuned models and non-code-mixed multilingual models, along with zero-shot generative large language models (LLMs). Specifically, we evaluate HingBERT, HingMBERT, and HingRoBERTa (trained on code-mixed data), and BERT Base Cased, IndicBERT, RoBERTa and MuRIL (trained on non-code-mixed multilingual data). We also assess the performance of Google Gemini in a zero-shot setting using a modified version of the dataset with NER tags removed. All models are tested on a benchmark Hinglish NER dataset using Precision, Recall, and F1-score. Results show that code-mixed models, particularly HingRoBERTa and HingBERT-based fine-tuned models, outperform others - including closed-source LLMs like Google Gemini - due to domain-specific pretraining. Non-code-mixed models perform reasonably but show limited adaptability. Notably, Google Gemini exhibits competitive zero-shot performance, underlining the generalization strength of modern LLMs. This study provides key insights into the effectiveness of specialized versus generalized models for code-mixed NER tasks.

Keywords

Cite

@article{arxiv.2509.02514,
  title  = {Comparative Study of Pre-Trained BERT and Large Language Models for Code-Mixed Named Entity Recognition},
  author = {Mayur Shirke and Amey Shembade and Pavan Thorat and Madhushri Wagh and Raviraj Joshi},
  journal= {arXiv preprint arXiv:2509.02514},
  year   = {2025}
}
R2 v1 2026-07-01T05:17:42.624Z