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Accelerated Randomized Coordinate Descent Algorithms for Stochastic Optimization and Online Learning

机译:随机优化和在线学习加速随机坐标血管算法

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We propose accelerated randomized coordinate descent algorithms for stochastic optimization and online learning. Our algorithms have significantly less per-iteration complexity than the known accelerated gradient algorithms. The proposed algorithms for online learning have better regret performance than the known randomized online coordinate descent algorithms. Furthermore, the proposed algorithms for stochastic optimization exhibit as good convergence rates as the best known randomized coordinate descent algorithms. We also show simulation results to demonstrate performance of the proposed algorithms.
机译:我们提出了加速随机坐标血管下降算法,用于随机优化和在线学习。我们的算法具有比已知的加速梯度算法显着较少的偏移复杂性。用于在线学习的所提出的算法具有比已知的随机在线坐标缩进算法更好的后悔性能。此外,所提出的随机优化算法表现出作为最佳已知的随机坐标缩进算法的良好收敛速率。我们还显示模拟结果,以证明所提出的算法的性能。

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