Hands-On Tutorial: Labeling with LLM and Human-in-the-Loop
Abstract
Training and deploying machine learning models relies on a large amount of human-annotated data. As human labeling becomes increasingly expensive and time-consuming, recent research has developed multiple strategies to speed up annotation and reduce costs and human workload: generating synthetic training data, active learning, and hybrid labeling. This tutorial is oriented toward practical applications: we will present the basics of each strategy, highlight their benefits and limitations, and discuss in detail real-life case studies. Additionally, we will walk through best practices for managing human annotators and controlling the quality of the final dataset. The tutorial includes a hands-on workshop, where attendees will be guided in implementing a hybrid annotation setup. This tutorial is designed for NLP practitioners from both research and industry backgrounds who are involved in or interested in optimizing data labeling projects.
Keywords
Cite
@article{arxiv.2411.04637,
title = {Hands-On Tutorial: Labeling with LLM and Human-in-the-Loop},
author = {Ekaterina Artemova and Akim Tsvigun and Dominik Schlechtweg and Natalia Fedorova and Konstantin Chernyshev and Sergei Tilga and Boris Obmoroshev},
journal= {arXiv preprint arXiv:2411.04637},
year = {2025}
}
Comments
To be presented at COLING 2025