基于马尔可夫样本的随机组合梯度方法

Mengdi Wang, Ji Liu
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引用次数: 18

摘要

考虑凸优化问题minxf (g(x)),其中f和g都是未知的,但可以通过抽样估计。我们考虑了随机组合梯度下降法(SCGD),该方法基于随机函数和由条件抽样oracle生成的次梯度评估进行更新。我们关注样本被马尔可夫噪声破坏的情况。在一定的递减步长假设下,我们证明了SCGD的迭代几乎肯定收敛于一个最优解。在特定的恒定步长假设下,我们得到了算法平均迭代的有限样本误差界。给出了动态规划中在线价值评估的一个应用。
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A stochastic compositional gradient method using Markov samples
Consider the convex optimization problem minx ƒ (g(x)) where both ƒ and g are unknown but can be estimated through sampling. We consider the stochastic compositional gradient descent method (SCGD) that updates based on random function and subgradient evaluations, which are generated by a conditional sampling oracle. We focus on the case where samples are corrupted with Markov noise. Under certain diminishing stepsize assumptions, we prove that the iterate of SCGD converges almost surely to an optimal solution if such a solution exists. Under specific constant stepsize assumptions, we obtain finite-sample error bounds for the averaged iterates of the algorithm. We illustrate an application to online value evaluation in dynamic programming.
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