Developing large-scale distributed methods that are robust to the presence of adversarial or corrupted workers is an important part of making such methods practical for real-world problems. In this paper, we propose an iterative approach that is adversary-tolerant for convex optimization problems. By leveraging simple statistics, our method ensures convergence and is capable of adapting to adversarial distributions. Additionally, the efficiency of the proposed methods for solving convex problems is shown in simulations with the presence of adversaries. Through simulations, we demonstrate the efficiency of our approach in the presence of adversaries and its ability to identify adversarial workers with high accuracy and tolerate varying levels of adversary rates.
翻译:开发大规模分布式方法,对敌对或腐败工人的存在具有活力,是使这类方法切实解决现实世界问题的一个重要部分。在本文件中,我们提出一种迭代方法,对锥体优化问题具有对抗容忍性。通过利用简单统计数据,我们的方法可以确保趋同,并能够适应对立分布式。此外,在与对手的模拟中,可以显示解决锥体问题的拟议方法的效率。通过模拟,我们展示了在对手在场的情况下我们的方法的效率,以及它能够以高度精确和容忍不同水平的对抗率来识别敌对工人的能力。</s>