Robust 1-Bit Compressed Sensing via Hinge Loss Minimization
Martin Genzel, Alexander Stollenwerk

TL;DR
This paper introduces a convex optimization method using hinge loss for robustly estimating high-dimensional signals from noisy 1-bit measurements, providing theoretical guarantees even under strong noise and broad structural assumptions.
Contribution
It demonstrates that hinge loss minimization can achieve optimal measurement rates for signal recovery, extending its application beyond classification to high-dimensional signal estimation.
Findings
Achieves stable reconstruction with O(m^{-1/2}) measurements.
Provides non-asymptotic error bounds under broad signal structures.
Proves robustness of hinge loss estimator in noisy settings.
Abstract
This work theoretically studies the problem of estimating a structured high-dimensional signal from noisy -bit Gaussian measurements. Our recovery approach is based on a simple convex program which uses the hinge loss function as data fidelity term. While such a risk minimization strategy is very natural to learn binary output models, such as in classification, its capacity to estimate a specific signal vector is largely unexplored. A major difficulty is that the hinge loss is just piecewise linear, so that its "curvature energy" is concentrated in a single point. This is substantially different from other popular loss functions considered in signal estimation, e.g., the square or logistic loss, which are at least locally strongly convex. It is therefore somewhat unexpected that we can still prove very similar types of recovery guarantees for the hinge loss…
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