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Two stochastic optimization algorithms for convex optimization with fixed point constraints

机译:具有固定点约束的凸优化的两个随机优化算法

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摘要

Two optimization algorithms are proposed for solving a stochastic programming problem for which the objective function is given in the form of the expectation of convex functions and the constraint set is defined by the intersection of fixed point sets of nonexpansive mappings in a real Hilbert space. This setting of fixed point constraints enables consideration of the case in which the projection onto each of the constraint sets cannot be computed efficiently. Both algorithms use a convex function and a nonexpansive mapping determined by a certain probabilistic process at each iteration. One algorithm blends a stochastic gradient method with the Halpern fixed point algorithm. The other is based on a stochastic proximal point algorithm and the Halpern fixed point algorithm; it can be applied to nonsmooth convex optimization. Convergence analysis showed that, under certain assumptions, any weak sequential cluster point of the sequence generated by either algorithm almost surely belongs to the solution set of the problem. Convergence rate analysis illustrated their efficiency, and the numerical results of convex optimization over fixed point sets demonstrated their effectiveness.
机译:提出了两种优化算法,用于解决目标函数以凸起函数的期望形式给出的随机编程问题,并且约束集由真正的希尔伯特空间中的非百分比映射的固定点组的交叉点定义。该设置的固定点约束的设置能够考虑不能有效地计算到每个约束组上的投影的情况。这两种算法都使用凸起函数和非缺点映射由每次迭代的某个概率过程确定。一种算法将随机梯度法与Halpern定点算法混合。另一个基于随机近端点算法和Halpern定点算法;它可以应用于非光滑凸优化。收敛分析表明,在某些假设下,任一算法生成的序列的任何弱顺序聚类点几乎肯定属于问题的解决方案集。收敛速率分析说明了它们的效率,并且通过固定点组的凸优化的数值结果证明了它们的有效性。

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