A Hybrid Classical-Quantum Fined Tuned BERT for Text Classification

Authors

  • Abu Kaisar Mohammad Masum University of Louisiana at Lafayette
  • Naveed Mahmud Florida Institute of Technology
  • M. Hassan Najafi Case Western Reserve University
  • Sercan Aygun University of Louisiana at Lafayette

DOI:

https://doi.org/10.1609/aaaiss.v7i1.36908

Abstract

Fine-tuning BERT for text classification can be computationally challenging and requires careful hyper-parameter tuning. Recent studies have highlighted the potential of quantum algorithms to outperform conventional methods in machine learning and text classification tasks. In this work, we propose a hybrid approach that integrates an n-qubit quantum circuit with a classical BERT model for text classification. We evaluate the performance of the fine-tuned classical-quantum BERT and demonstrate its feasibility as well as its potential in advancing this research area. Our experimental results show that the proposed hybrid model achieves performance that is competitive with, and in some cases better than, the classical baselines on standard benchmark datasets. Furthermore, our approach demonstrates the adaptability of classical–quantum models for fine-tuning pre-trained models across diverse datasets. Overall, the hybrid model highlights the promise of quantum computing in achieving improved performance for text classification tasks.

Downloads

Published

2025-11-23

How to Cite

Masum, A. K. M., Mahmud, N., Najafi, M. H., & Aygun, S. (2025). A Hybrid Classical-Quantum Fined Tuned BERT for Text Classification. Proceedings of the AAAI Symposium Series, 7(1), 374-380. https://doi.org/10.1609/aaaiss.v7i1.36908

Issue

Section

First AAAI Symposium on Quantum Information & Machine Learning (QIML): Bridging Quantum Computing and Artificial Intelligence