English

Prune Responsibly

Computer Vision and Pattern Recognition 2020-09-22 v1 Computers and Society Machine Learning

Abstract

Irrespective of the specific definition of fairness in a machine learning application, pruning the underlying model affects it. We investigate and document the emergence and exacerbation of undesirable per-class performance imbalances, across tasks and architectures, for almost one million categories considered across over 100K image classification models that undergo a pruning process.We demonstrate the need for transparent reporting, inclusive of bias, fairness, and inclusion metrics, in real-life engineering decision-making around neural network pruning. In response to the calls for quantitative evaluation of AI models to be population-aware, we present neural network pruning as a tangible application domain where the ways in which accuracy-efficiency trade-offs disproportionately affect underrepresented or outlier groups have historically been overlooked. We provide a simple, Pareto-based framework to insert fairness considerations into value-based operating point selection processes, and to re-evaluate pruning technique choices.

Keywords

Cite

@article{arxiv.2009.09936,
  title  = {Prune Responsibly},
  author = {Michela Paganini},
  journal= {arXiv preprint arXiv:2009.09936},
  year   = {2020}
}
R2 v1 2026-06-23T18:41:34.926Z