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NanoNet: Parameter-Efficient Learning with Label-Scarce Supervision for Lightweight Text Mining Model

Machine Learning 2026-02-09 v1 Artificial Intelligence

Abstract

The lightweight semi-supervised learning (LSL) strategy provides an effective approach of conserving labeled samples and minimizing model inference costs. Prior research has effectively applied knowledge transfer learning and co-training regularization from large to small models in LSL. However, such training strategies are computationally intensive and prone to local optima, thereby increasing the difficulty of finding the optimal solution. This has prompted us to investigate the feasibility of integrating three low-cost scenarios for text mining tasks: limited labeled supervision, lightweight fine-tuning, and rapid-inference small models. We propose NanoNet, a novel framework for lightweight text mining that implements parameter-efficient learning with limited supervision. It employs online knowledge distillation to generate multiple small models and enhances their performance through mutual learning regularization. The entire process leverages parameter-efficient learning, reducing training costs and minimizing supervision requirements, ultimately yielding a lightweight model for downstream inference.

Keywords

Cite

@article{arxiv.2602.06093,
  title  = {NanoNet: Parameter-Efficient Learning with Label-Scarce Supervision for Lightweight Text Mining Model},
  author = {Qianren Mao and Yashuo Luo and Ziqi Qin and Junnan Liu and Weifeng Jiang and Zhijun Chen and Zhuoran Li and Likang Xiao and Chuou Xu and Qili Zhang and Hanwen Hao and Jingzheng Li and Chunghua Lin and Jianxin Li and Philip S. Yu},
  journal= {arXiv preprint arXiv:2602.06093},
  year   = {2026}
}
R2 v1 2026-07-01T10:23:14.403Z