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Asynchronous Proximal Stochastic Gradient Algorithm for Composition Optimization Problems

机译:用于组成优化问题的异步近端随机梯度算法

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In machine learning research, many emerging applications can be (re) formulated as the composition optimization problem with nonsmooth regularization penalty. To solve this problem, traditional stochastic gradient descent (SGD) algorithm and its variants either have low convergence rate or are computationally expensive. Recently, several stochastic composition gradient algorithms have been proposed, however, these methods are still inefficient and not scalable to large-scale composition optimization problem instances. To address these challenges, we propose an asynchronous parallel algorithm, named Async-ProxSCVR, which effectively combines asynchronous parallel implementation and variance reduction method. We prove that the algorithm admits the fastest convergence rate for both strongly convex and general nonconvex cases. Furthermore, we analyze the query complexity of the proposed algorithm and prove that linear speedup is accessible when we increase the number of processors. Finally, we evaluate our algorithm Async-ProxSCVR on two representative composition optimization problems including value function evaluation in reinforcement learning and sparse mean-variance optimization problem. Experimental results show that the algorithm achieves significant speedups and is much faster than existing compared methods.
机译:在机器学习研究中,许多新兴应用程序可以(重新)配制成具有非结构优化问题的组成优化问题。为了解决这个问题,传统的随机梯度下降(SGD)算法及其变体具有低收敛速度,或者计算昂贵。最近,已经提出了几种随机组合梯度算法,然而,这些方法仍然低效,并且不可扩展到大规模的组成优化问题实例。为了解决这些挑战,我们提出了一种名为Async-ProxSCVR的异步并行算法,其有效地结合了异步并行实现和方差减少方法。我们证明该算法承认强凸和一般非凸起病例的最快收敛速度​​。此外,我们分析所提出的算法的查询复杂性,并证明当我们增加处理器数量时,可以访问线性加速。最后,我们在两种代表性组合物优化问题上评估了我们的算法Async-ProxSCVR,包括增强学习和稀疏平均方差优化问题的价值函数评估。实验结果表明,该算法实现了显着的加速,比现有的比较方法快得多。

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