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A parallelized combined direction simultaneous perturbation stochastic approximation algorithm

机译:平行化组合方向同时扰动随机近似算法

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The simultaneous perturbation stochastic approximation(SPSA) belongs to the class of iterative gradient-free algorithm. However, because of its slow convergence rate, the experimental effect is not ideal for large-scale problems. In order to accelerate the SPSA algorithm, this paper proposes a parallelized combined direction SPSA algorithm. Gradient directions among the master and slaves are combined to be a new iteration direction in every iteration to improve algorithm performance. Numerical experiments for typical nonlinear optimization problems demonstrate that the present algorithm outperforms the SPSA algorithm in the fewer step numbers.
机译:同时扰动随机近似(SPSA)属于迭代梯度算法的类。然而,由于其收敛速度缓慢,实验效果并不理想的是大规模问题。为了加速SPSA算法,本文提出了一种并行组合方向SPSA算法。主设备和从站之间的梯度方向被组合为每次迭代中的新迭代方向,以提高算法性能。典型非线性优化问题的数值实验表明,本算法在较少的步数中优于SPSA算法。

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