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Convergent Noisy forward-backward-forward algorithms in non-monotone variational inequalities

机译:非单调变分不等式中的收敛嘈杂的前后向前算法

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摘要

We develop a new stochastic algorithm with variance reduction for solving pseudo-monotone stochastic variational inequalities. Our method builds on Tseng’s forward-backward-forward algorithm, which is known in the deterministic literature to be a valuable alternative to Korpelevich’s extragradient method when solving variational inequalities over a convex and closed set governed with pseudo-monotone and Lipschitz continuous operators. The main computational advantage of Tseng’s algorithm is that it relies only on a single projection step, and two independent queries of a stochastic oracle. Our algorithm incorporates a variance reduction mechanism, and leads to a. S. convergence to solutions of a merely pseudo-monotone stochastic variational inequality problem. To the best of our knowledge, this is the first stochastic algorithm achieving this by using only a single projection at each iteration.
机译:我们开发了一种新的随机算法,具有求解伪单调随机变分不等式的方差减少。我们的方法构建了曾前后前进算法,该算法在确定性文献中已知,是KORPELEVICH的EXTRADRAINT方法的有价值替代品,当求解凸面和闭合集合的凸面和嘴唇连续运营商的凸起和关闭集合时。 Tseng算法的主要计算优势在于它仅依赖于单个投影步骤以及随机甲骨文的两个独立查询。我们的算法包含差异减少机制,并导致a。 S.仅伪单调随机变分不等式问题的解决方案的收敛性。据我们所知,这是第一个通过在每次迭代时使用单个投影来实现这一点的第一个随机算法。

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