Fair and Diverse DPP-Based Data Summarization

Abstract

Sampling methods that choose a subset of the data proportional to its diversity in the feature space are popular for data summarization. However, recent studies have noted the occurrence of bias – e.g., under or over representation of a particular gender or ethnicity – in such data summarization methods. In this paper we initiate a study of the problem of outputting a diverse and fair summary of a given dataset. We work with a well-studied determinantal measure of diversity and corresponding distributions (DPPs) and present a framework that allows us to incorporate a general class of fairness constraints into such distributions. Designing efficient algorithms to sample from these constrained determinantal distributions, however, suffers from a complexity barrier; we present a fast sampler that is provably good when the input vectors satisfy a natural property. Our empirical results on both real-world and synthetic datasets show that the diversity of the samples produced by adding fairness constraints is not too far from the unconstrained case.

Cite

Text

Celis et al. "Fair and Diverse DPP-Based Data Summarization." International Conference on Machine Learning, 2018.

Markdown

[Celis et al. "Fair and Diverse DPP-Based Data Summarization." International Conference on Machine Learning, 2018.](https://mlanthology.org/icml/2018/celis2018icml-fair/)

BibTeX

@inproceedings{celis2018icml-fair,
  title     = {{Fair and Diverse DPP-Based Data Summarization}},
  author    = {Celis, Elisa and Keswani, Vijay and Straszak, Damian and Deshpande, Amit and Kathuria, Tarun and Vishnoi, Nisheeth},
  booktitle = {International Conference on Machine Learning},
  year      = {2018},
  pages     = {716-725},
  volume    = {80},
  url       = {https://mlanthology.org/icml/2018/celis2018icml-fair/}
}