English

Certifying Robustness to Programmable Data Bias in Decision Trees

Machine Learning 2021-10-12 v1 Computers and Society

Abstract

Datasets can be biased due to societal inequities, human biases, under-representation of minorities, etc. Our goal is to certify that models produced by a learning algorithm are pointwise-robust to potential dataset biases. This is a challenging problem: it entails learning models for a large, or even infinite, number of datasets, ensuring that they all produce the same prediction. We focus on decision-tree learning due to the interpretable nature of the models. Our approach allows programmatically specifying bias models across a variety of dimensions (e.g., missing data for minorities), composing types of bias, and targeting bias towards a specific group. To certify robustness, we use a novel symbolic technique to evaluate a decision-tree learner on a large, or infinite, number of datasets, certifying that each and every dataset produces the same prediction for a specific test point. We evaluate our approach on datasets that are commonly used in the fairness literature, and demonstrate our approach's viability on a range of bias models.

Keywords

Cite

@article{arxiv.2110.04363,
  title  = {Certifying Robustness to Programmable Data Bias in Decision Trees},
  author = {Anna P. Meyer and Aws Albarghouthi and Loris D'Antoni},
  journal= {arXiv preprint arXiv:2110.04363},
  year   = {2021}
}

Comments

To be published at NeurIPS 2021. 22 pages, 4 figures

R2 v1 2026-06-24T06:45:01.250Z