Existing Domain Adaptation (DA) algorithms train target models to classify all samples in the target domain, but it fails to recognize the possibility that, within the target domain, some samples are closer to the source domain and thus should be classified by source domain models. In this paper, we develop a novel unsupervised DA algorithm, the Enforced Transfer, which employs an out-of-distribution detection algorithm to decide which model (i.e., source domain or target domain) to apply on the testing instance, i.e., divide-and-conquer. Instead of choosing the models at the instance-level, we make the choice of models at the layers of deep models. On three types of DA tasks, we outperform the state-of-the-art algorithms.
翻译:现有的域适应算法(DA)培训目标模型,对目标域的所有样品进行分类,但是它没有认识到在目标域内,有些样品接近源域,因此应该按源域模型分类。在本文中,我们开发了一种新的不受监督的DA算法(强制转移),它使用一种分配外检测算法(即源域或目标域)来决定哪一种模型(即源域或目标域)适用于试验实例,即分化和收购。我们没有在实例一级选择模型,而是在深层模型层中选择模型。在三种类型的DA任务中,我们比最先进的算法更完美。