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Even Faster Accelerated Coordinate Descent Using Non-Uniform Sampling

机译:甚至使用非均匀抽样更快的加速坐标血统

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Accelerated coordinate descent is widely used in optimization due to its cheap per-iteration cost and scalability to large-scale problems. Up to a primal-dual transformation, it is also the same as accelerated stochastic gradient descent that is one of the central methods used in machine learning. In this paper, we improve the best known running time of accelerated coordinate descent by a factor up to {the square root of}n. Our improvement is based on a clean, novel non-uniform sampling that selects each coordinate with a probability proportional to the square root of its smoothness parameter. Our proof technique also deviates from the classical estimation sequence technique used in prior work. Our speed-up applies to important problems such as empirical risk minimization and solving linear systems, both in theory and in practice.
机译:由于其廉价的偏移成本和对大规模问题的可扩展性,加速坐标下降广泛用于优化。直到一种原始 - 双变换,它也与加速随机梯度下降相同,即机器学习中使用的中央方法之一。在本文中,我们将加速坐标血统的最佳已知运行时间改善到{n的平方根。我们的改进基于干净的新颖的非均匀采样,该采样选择每个坐标,其概率与其平滑度参数的平方根成比例。我们的证明技术还偏离了现有工作中使用的经典估计序列技术。我们的速度适用于理论和实践中的经验风险最小化和求解线性系统等重要问题。

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