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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Doubly Greedy Primal-Dual Coordinate Descent for Sparse Empirical Risk Minimization
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Doubly Greedy Primal-Dual Coordinate Descent for Sparse Empirical Risk Minimization

机译:双重贪婪的原始 - 双坐标血管下降,用于稀疏经验风险最小化

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We consider the popular problem of sparse empirical risk minimization with linear predictors and a large number of both features and observations. With a convex-concave saddle point objective reformulation, we propose a Doubly Greedy Primal-Dual Coordinate Descent algorithm that is able to exploit sparsity in both primal and dual variables. It enjoys a low cost per iteration and our theoretical analysis shows that it converges linearly with a good iteration complexity, provided that the set of primal variables is sparse. We then extend this algorithm further to leverage active sets. The resulting new algorithm is even faster, and experiments on large-scale Multi-class data sets show that our algorithm achieves up to 30 times speedup on several state-of-the-art optimization methods.
机译:我们认为具有线性预测器和大量特征和观察的稀疏经验风险最小化的流行问题。通过凸凹鞍点目标重构,我们提出了一种双重贪婪的原始 - 双坐标血换算法,其能够在原始和双变量中利用稀疏性。它享有较低的迭代成本,我们的理论分析表明,它以良好的迭代复杂性线性收敛,条件是该组原始变量稀疏。然后,我们进一步扩展该算法以利用活动集。由此产生的新算法甚至更快,大规模多级数据集的实验表明,我们的算法在多种最先进的优化方法上实现了高速增速。

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