Breakthroughs in unsupervised domain adaptation (uDA) can help in adapting models from a label-rich source domain to unlabeled target domains. Despite these advancements, there is a lack of research on how uDA algorithms, particularly those based on adversarial learning, can work in distributed settings. In real-world applications, target domains are often distributed across thousands of devices, and existing adversarial uDA algorithms -- which are centralized in nature -- cannot be applied in these settings. To solve this important problem, we introduce FRuDA: an end-to-end framework for distributed adversarial uDA. Through a careful analysis of the uDA literature, we identify the design goals for a distributed uDA system and propose two novel algorithms to increase adaptation accuracy and training efficiency of adversarial uDA in distributed settings. Our evaluation of FRuDA with five image and speech datasets show that it can boost target domain accuracy by up to 50% and improve the training efficiency of adversarial uDA by at least 11 times.
翻译:在未经监督的域适应(uDA)中,突破线能够帮助将模型从标签丰富的源域改造成无标签的目标域。尽管取得了这些进步,但对于UDA算法,特别是以对抗性学习为基础的算法如何在分布式环境中发挥作用缺乏研究。在现实世界应用中,目标域往往分布在数千个装置中,现有的对抗性uDA算法(在性质上是集中的)无法在这些环境中应用。为了解决这一重要问题,我们引入FruDA:一个分布式对抗性UDA的端到端框架。我们通过仔细分析一个分布式的UDA文献,确定分布式的UDA系统的设计目标,并提出两个新的算法,以提高分布式环境中对抗性uDA的适应性准确性和培训效率。我们用5个图像和语音数据集对FruDA的评估显示,它能够提高目标域的精确度,达到50%,提高对抗性UDA的训练效率至少11次。