Tractability from overparametrization: The example of the negative perceptron
Andrea Montanari, Yiqiao Zhong, Kangjie Zhou

TL;DR
This paper investigates the overparametrization threshold for the negative perceptron problem, establishing bounds on the maximum margin and analyzing the performance of a linear programming algorithm in high-dimensional settings.
Contribution
It provides the first rigorous bounds on the overparametrization threshold for the negative perceptron and compares algorithmic thresholds with the interpolation threshold.
Findings
Bounds on the overparametrization threshold match asymptotically as margin goes to negative infinity.
A linear programming algorithm's threshold is characterized and compared to the interpolation threshold.
A gap between the algorithmic and interpolation thresholds suggests potential for other algorithms.
Abstract
In the negative perceptron problem we are given data points , where is a -dimensional vector and is a binary label. The data are not linearly separable and hence we content ourselves to find a linear classifier with the largest possible \emph{negative} margin. In other words, we want to find a unit norm vector that maximizes . This is a non-convex optimization problem (it is equivalent to finding a maximum norm vector in a polytope), and we study its typical properties under two random models for the data. We consider the proportional asymptotics in which with , and prove upper and lower bounds on the maximum margin or -- equivalently -- on its inverse function…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Neural Networks and Applications · Face and Expression Recognition
