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BYRDIE: A BYZANTINE-RESILIENT DISTRIBUTED LEARNING ALGORITHM

机译:Byrdie:拜占庭式弹性分布式学习算法

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In this paper, a Byzantine-resilient distributed coordinate descent (ByRDiE) algorithm is introduced to accomplish machine learning tasks in a fully distributed fashion when there are Byzantine failures in the network. When data is distributed over a network, it is sometimes desirable to implement a fully distributed learning algorithm that does not require sharing of raw data among the network entities. To this end, existing distributed algorithms usually count on the cooperation of all nodes in the network. However, real-world applications often encounter situations where some nodes are either not reliable or are malicious. Such situations, in which some nodes do not behave as intended, can be modeled as having undergone Byzantine failures. Generally, Byzantine failures are hard to detect and can lead to break down of distributed learning algorithms. In this paper, it is shown that ByRDiE can provably tolerate Byzantine failures in the network under certain assumptions on the network topology and the machine learning tasks. ByRDiE accomplishes this by incorporating a local “screening” step into the update of a distributed coordinate descent algorithm. Finally, numerical results reported in the paper confirm the robustness of ByRDiE to Byzantine failures.
机译:在本文中,引入了拜占庭集 - 弹性分布坐标阶段(BYRDIE)算法以在网络中存在拜占庭式故障时以完全分布的方式完成机器学习任务。当数据分布在网络上时,有时希望实现一种完全分布的学习算法,该算法不需要在网络实体之间共享原始数据。为此,现有的分布式算法通常计算网络中所有节点的协作。然而,现实世界应用程序经常遇到某些节点不可靠或恶意的情况。这种情况,其中一些节点不会像预期的那样表现,可以被建模,因为经历了拜占庭的故障。通常,拜占庭故障难以检测,可以导致分布式学习算法分解。在本文中,表明Byrdie在网络拓扑上的某些假设和机器学习任务的某些假设下可以在网络中可证实禁止拜占庭故障。 Byrdie通过将本地的“筛选”步骤结合到分布式坐标缩进算法的更新中来实现这一点。最后,论文报告的数值结果证实了Byrdie对拜占庭故障的鲁棒性。

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