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A linear programming approach to sparse linear regression with quantized data

机译:使用量化数据进行稀疏线性回归的线性规划方法

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The sparse linear regression problem is difficult to handle with usual sparse optimization models when both predictors and measurements are either quantized or represented in low-precision, due to non-convexity. In this paper, we provide a novel linear programming approach, which is effective to tackle this problem. In particular, we prove theoretical guarantees of robustness, and we present numerical results that show improved performance with respect to the state-of-the-art methods.
机译:由于非凸性,当对预测变量和度量进行量化或以低精度表示时,稀疏线性回归问题很难用常规的稀疏优化模型处理。在本文中,我们提供了一种新颖的线性规划方法,可有效解决此问题。特别是,我们证明了鲁棒性的理论保证,并且我们提供了数值结果,这些结果表明相对于最新方法,性能有所提高。

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