Core-Sets for Fair and Diverse Data Summarization
Abstract
We study core-set construction algorithms for the task of Diversity Maximization under fairness/partition constraint. Given a set of points $P$ in a metric space partitioned into $m$ groups, and given $k_1,\ldots,k_m$, the goal of this problem is to pick $k_i$ points from each group $i$ such that the overall diversity of the $k=\sum_i k_i$ picked points is maximized. We consider two natural diversity measures: sum-of-pairwise distances and sum-of-nearest-neighbor distances, and show improved core-set construction algorithms with respect to these measures. More precisely, we show the first constant factor core-set w.r.t. sum-of-pairwise distances whose size is independent of the size of the dataset and the aspect ratio. Second, we show the first core-set w.r.t. the sum-of-nearest-neighbor distances. Finally, we run several experiments showing the effectiveness of our core-set approach. In particular, we apply constrained diversity maximization to summarize a set of timed messages that takes into account the messages' recency. Specifically, the summary should include more recent messages compared to older ones. This is a real task in one of the largest communication platforms, affecting the experience of hundreds of millions daily active users. By utilizing our core-set method for this task, we achieve a 100x speed-up while losing the diversity by only a few percent. Moreover, our approach allows us to improve the space usage of the algorithm in the streaming setting.
Cite
Text
Mahabadi and Trajanovski. "Core-Sets for Fair and Diverse Data Summarization." Neural Information Processing Systems, 2023.Markdown
[Mahabadi and Trajanovski. "Core-Sets for Fair and Diverse Data Summarization." Neural Information Processing Systems, 2023.](https://mlanthology.org/neurips/2023/mahabadi2023neurips-coresets/)BibTeX
@inproceedings{mahabadi2023neurips-coresets,
title = {{Core-Sets for Fair and Diverse Data Summarization}},
author = {Mahabadi, Sepideh and Trajanovski, Stojan},
booktitle = {Neural Information Processing Systems},
year = {2023},
url = {https://mlanthology.org/neurips/2023/mahabadi2023neurips-coresets/}
}