Variational inequalities are a formalism that includes games, minimization, saddle point, and equilibrium problems as special cases. Methods for variational inequalities are therefore universal approaches for many applied tasks, including machine learning problems. This work concentrates on the decentralized setting, which is increasingly important but not well understood. In particular, we consider decentralized stochastic (sum-type) variational inequalities over fixed and time-varying networks. We present lower complexity bounds for both communication and local iterations and construct optimal algorithms that match these lower bounds. Our algorithms are the best among the available literature not only in the decentralized stochastic case, but also in the decentralized deterministic and non-distributed stochastic cases. Experimental results confirm the effectiveness of the presented algorithms.
翻译:差异性不平等是一种形式主义,它包括游戏、最小化、马鞍和平衡问题,作为特殊情况。因此,差异性不平等的方法是许多应用任务(包括机器学习问题)的通用方法。这项工作集中于分散化的环境,这种环境越来越重要,但没有得到很好的理解。特别是,我们认为固定和时间变化的网络存在分散化的随机(总型)差异性不平等。我们为通信和地方迭代提供了较低的复杂性界限,并构建了与这些较低界限相匹配的最佳算法。我们的算法不仅在分散化的随机化案例中是现有文献中最好的,而且在分散化的确定性和非分散化的随机化案例中也是最好的。实验结果证实了所提出的算法的有效性。