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Better Approximation and Faster Algorithm Using the Proximal Average

机译:使用近端平均值的更好的近似和更快的算法

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摘要

It is a common practice to approximate "complicated" functions with more friendly ones. In large-scale machine learning applications, nonsmooth losses/regularizers that entail great computational challenges are usually approximated by smooth functions. We re-examine this powerful methodology and point out a nonsmooth approximation which simply pretends the linearity of the proximal map. The new approximation is justified using a recent convex analysis tool-proximal average, and yields a novel proximal gradient algorithm that is strictly better than the one based on smoothing, without incurring any extra overhead. Numerical experiments conducted on two important applications, overlapping group lasso and graph-guided fused lasso, corroborate the theoretical claims.
机译:近似“复杂”功能是一种常见的做法,更友好。在大型机器学习应用中,不需要巨大的计算挑战的非损耗/常规程序通常通过平滑函数来近似。我们重新检查了这种强大的方法,并指出了一个非现代近似,它只是假装近端地图的线性。使用最近的凸分析工具 - 近端平均值,新的近似是合理的,并产生一种新的近端梯度算法,其严格比平滑更好,而不会产生任何额外的开销。在两个重要应用中进行的数值实验,重叠组套索和图形引导熔融套索,证实了理论索赔。

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