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Adaptive balancing of gradient and update computation times using global geometry and approximate subproblems

机译:使用全局几何和近似子问题的梯度和更新计算时间的自适应平衡

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First-order optimization methods comprise two important primitives: i) the computation of gradient information and ii) the computation of the update that leads to the next iterate. In practice there is often a wide mismatch between the time required for the two steps, leading to underutilization of resources. In this work, we propose a new framework, Approx Composite Minimization (ACM) that uses approximate update steps to ensure balance between the two operations. The accuracy is adaptively chosen in an online fashion to take advantage of changing conditions. Our unified analysis for approximate composite minimization generalizes and extends previous work to new settings. Numerical experiments on Lasso regression and SVMs demonstrate the effectiveness of the novel scheme.
机译:一阶优化方法包括两个重要的基元:i)梯度信息的计算和ii)将更新的计算导致到下一个迭代的更新。在实践中,两步所需的时间之间通常存在广泛的不匹配,从而导致资源未充分利用。在这项工作中,我们提出了一个新的框架,大约复合最小化(ACM),它使用近似更新步骤来确保两个操作之间的平衡。准确性以在线方式自适应选择,以利用不断变化的条件。我们统一的近似复合最小化的分析概括并扩展了以前的工作到新设置。卢斯回归和SVMS的数值实验证明了新颖方案的有效性。

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