Understanding unsupervised domain adaptation has been an important task that has been well explored. However, the wide variety of methods have not analyzed the role of a classifier's performance in detail. In this paper, we thoroughly examine the role of a classifier in terms of matching source and target distributions. We specifically investigate the classifier ability by matching a) the distribution of features, b) probabilistic uncertainty for samples and c) certainty activation mappings. Our analysis suggests that using these three distributions does result in a consistently improved performance on all the datasets. Our work thus extends present knowledge on the role of the various distributions obtained from the classifier towards solving unsupervised domain adaptation.
翻译:了解不受监督的域适应是一项重要任务,已经很好地探讨过。然而,各种各样的方法并没有详细分析分类员的性能作用。在本文件中,我们彻底审查了分类员在匹配源和目标分布方面所起的作用。我们特别调查分类员的能力,方法是匹配(a) 特征分布,(b) 样本的概率不确定性和(c) 确定性活化绘图。我们的分析表明,使用这三种分布方法确实能够不断改善所有数据集的性能。我们的工作因此扩大了从分类员那里获得的各种分配对于解决不受监督域适应的作用的了解。