ICML2024

Straight-Through Meets Sparse Recovery: the Support Exploration Algorithm

Mimoun Mohamed, François Malgouyres, Valentin Emiya, Caroline Chaux

被引用 4 次

摘要

The straight-through estimator (STE) is commonly used to optimize quantized neural networks, yet its contexts of effective performance are still unclear despite empirical successes.To make a step forward in this comprehension, we apply STE to a well-understood problem: sparse support recovery. We introduce the Support Exploration Algorithm (SEA), a novel algorithm promoting sparsity, and we analyze its performance in support recovery (a.k.a. model selection) problems. SEA explores more supports than the state-of-the-art, leading to superior performance in experiments, especially when the columns of AA are strongly coherent.The theoretical analysis considers recovery guarantees when the linear measurements matrix AA satisfies the Restricted Isometry Property (RIP).The sufficient conditions of recovery are comparable but more stringent than those of the state-of-the-art in sparse support recovery. Their significance lies mainly in their applicability to an instance of the STE.