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Deep Cocktail Network: Multi-source Unsupervised Domain Adaptation with Category Shift

机译:深度鸡尾酒网络:具有类别转移的多源无监督域自适应

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Unsupervised domain adaptation (UDA) conventionally assumes labeled source samples coming from a single underlying source distribution. Whereas in practical scenario, labeled data are typically collected from diverse sources. The multiple sources are different not only from the target but also from each other, thus, domain adaptater should not be modeled in the same way. Moreover, those sources may not completely share their categories, which further brings a new transfer challenge called category shift. In this paper, we propose a deep cocktail network (DCTN) to battle the domain and category shifts among multiple sources. Motivated by the theoretical results in [33], the target distribution can be represented as the weighted combination of source distributions, and, the multi-source UDA via DCTN is then performed as two alternating steps: i) It deploys multi-way adversarial learning to minimize the discrepancy between the target and each of the multiple source domains, which also obtains the source-specific perplexity scores to denote the possibilities that a target sample belongs to different source domains. ii) The multi-source category classifiers are integrated with the perplexity scores to classify target sample, and the pseudo-labeled target samples together with source samples are utilized to update the multi-source category classifier and the feature extractor. We evaluate DCTN in three domain adaptation benchmarks, which clearly demonstrate the superiority of our framework.
机译:传统上,无监督域自适应(UDA)假定标记的源样本来自单个基础源分布。而在实际情况下,通常会从各种来源收集标记的数据。多个源不仅与目标不同,而且彼此不同,因此,域适配器不应以相同的方式建模。此外,这些来源可能无法完全共享其类别,这进一步带来了一种新的转移挑战,即类别转移。在本文中,我们提出了一个深度鸡尾酒网络(DCTN),以应对多种来源之间的领域和类别转移。根据[33]中的理论结果,目标分布可以表示为源分布的加权组合,然后,通过DCTN进行的多源UDA分为两个交替步骤:i)部署多向对抗学习为了最大程度地减少目标与多个源域中每个域之间的差异,这还将获得特定于源的困惑度分数,以表示目标样本属于不同源域的可能性。 ii)将多源类别分类器与困惑度分数集成在一起,以对目标样本进行分类,并使用伪标记的目标样本与源样本一起更新多源类别分类器和特征提取器。我们在三个域适应基准中评估了DCTN,这清楚地证明了我们框架的优越性。

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