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Importance-weighted conditional adversarial network for unsupervised domain adaptation

机译:无监督域适应的重要加权条件对抗网络

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In the construction of expert and intelligent systems, annotating and curating large datasets is very expensive; hence, there is a need to transfer the knowledge from existing annotated datasets to unlabeled data. However, data that are relevant for a specific application usually differ from publicly available datasets because they are sampled from a different domain. Domain adaptation (DA) has emerged as an efficient technique to compensate for such a domain shift. Recent studies have suggested that deep adversarial networks can achieve promising results for DA problems. However, existing adversarial DA methods assign equal importance to different examples and ignore the effect of difference in source domain samples or noise on adversarial performance. Moreover, most DA methods only focus on reducing the distribution difference, but not to learn a good target domain model. To address these issues, we propose an importance-weighted conditional adversarial (IWCA) network for unsupervised DA. In this study, an importance criterion based on domain similarity and prediction certainty is proposed to assign weights to different samples, which can reduce the harmful effects of difficult-to-transfer samples when reducing their cross-domain class conditional distribution differences. Furthermore, a sample selection criterion derived from the perspective of transfer cross validation is used to progressively select appropriate pseudo-labeled target samples to fine-tune the target model. These two criteria work in an EM-like manner that alternating align class conditional distribution for weighted samples and progressively select certain pseudo-labeled target samples to fine-tune the joint model. In this manner, the network will gradually generate features that approximate the actual conditional distribution of the target domain. The results of extensive experiments conducted on four datasets show that IWCA outperforms several state-of-the-art deep DA methods. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在专家和智能系统的建设中,注释和策划大型数据集非常昂贵;因此,需要将知识从现有的注释数据集转移到未标记的数据。但是,与特定应用程序相关的数据通常与公共数据集不同,因为它们是从不同域采样的。域适应(DA)已成为补偿此类域移位的有效技术。最近的研究表明,深层的对抗网络可以为DA问题达到有希望的结果。然而,现有的对策DA方法对不同的示例分配了同样重要的,并忽略源域样本或噪声差异对逆势性能的影响。此外,大多数DA方法只关注减少分布差异,而不是学习良好的目标域模型。为了解决这些问题,我们为无人监督的DA提出了一个重要的加权条件对抗(IWCA)网络。在该研究中,提出了一种基于域相似性和预测确定性的重要标准来将权重分配给不同的样本,这可以减少减少其跨域级条件分布差时难以转移样本的有害影响。此外,从转移交叉验证的角度导出的样本选择标准用于逐步选择适当的伪标记的目标样本以微调目标模型。这两个标准以EM的方式工作,使得加权样本的交替对齐类条件分布,并逐步选择某些伪标记的目标样本以微调联合模型。以这种方式,网络将逐渐生成近似目标域的实际条件分布的特征。在四个数据集上进行的广泛实验结果表明,IWCA优于几种最先进的深DA方法。 (c)2020 elestvier有限公司保留所有权利。

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