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A Survey of Unsupervised Deep Domain Adaptation

机译:无监督深域适应的调查

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摘要

Deep learning has produced state-of-the-art results for a variety of tasks. While such approaches for supervised learning have performed well, they assume that training and testing data are drawn from the same distribution, which may not always be the case. As a complement to this challenge, single-source unsupervised domain adaptation can handle situations where a network is trained on labeled data from a source domain and unlabeled data from a related but different target domain with the goal of performing well at test-time on the target domain. Many single-source and typically homogeneous unsupervised deep domain adaptation approaches have thus been developed, combining the powerful, hierarchical representations from deep learning with domain adaptation to reduce reliance on potentially costly target data labels. This survey will compare these approaches by examining alternative methods, the unique and common elements, results, and theoretical insights. We follow this with a look at application areas and open research directions.
机译:深度学习为各种任务产生了最先进的结果。虽然这些监督学习的这种方法表现良好,但他们假设训练和测试数据从相同的分布中汲取,这可能并不总是如此。作为对此挑战的补充,单源无监督域适应可以处理网络从源域和来自相关但不同的目标域中的标记数据培训网络的情况,其目标是在测试时间内执行良好的目标目标域名。因此,已经开发了许多单源和通常是同类无监督的深域适应方法,将强大的分层表示从深度学习与域适应相结合,以减少对潜在昂贵的目标数据标签的依赖。本调查将通过检查替代方法,独特和共同的元素,结果和理论见解进行比较这些方法。我们遵循这一点,看看应用领域和开放的研究方向。

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