Authors
Randall Balestriero, Zichao Wang, Richard G Baraniuk
Publication date
2022/5/23
Conference
ICASSP 2022
Pages
3888-3892
Publisher
IEEE
Description
Computing or approximating the convex hull of a dataset plays a role in a wide range of applications, including economics, statistics, and physics, to name just a few. However, convex hull computation and approximation is exponentially complex, in terms of both memory and computation, as the ambient space dimension increases. In this paper, we propose DeepHull, a new convex hull approximation algorithm based on convex deep networks (DNs) with continuous piecewise-affine nonlinearities and nonnegative weights. The idea is that binary classification between true data samples and adversarially generated samples with such a DN naturally induces a polytope decision boundary that approximates the true data convex hull. A range of exploratory experiments demonstrates that DeepHull efficiently produces a meaningful convex hull approximation, even in a high-dimensional ambient space.
Total citations
202220232024135
Scholar articles
R Balestriero, Z Wang, RG Baraniuk - ICASSP 2022-2022 IEEE International Conference on …, 2022