Adversarial learning strategy has demonstrated remarkable performance in dealing with single-source Domain Adaptation (DA) problems, and it has recently been applied to Multi-source DA (MDA) problems. Although most existing MDA strategies rely on a multiple domain discriminator setting, its effect on the latent space representations has been poorly understood. Here we adopt an information-theoretic approach to identify and resolve the potential adverse effect of the multiple domain discriminators on MDA: disintegration of domain-discriminative information, limited computational scalability, and a large variance in the gradient of the loss during training. We examine the above issues by situating adversarial DA in the context of information regularization. This also provides a theoretical justification for using a single and unified domain discriminator. Based on this idea, we implement a novel neural architecture called a Multi-source Information-regularized Adaptation Networks (MIAN). Large-scale experiments demonstrate that MIAN, despite its structural simplicity, reliably and significantly outperforms other state-of-the-art methods.
翻译:应对单源域适应(DA)问题的阿德萨里学习战略显示,在处理单一源域适应(DA)问题方面表现显著,最近还应用于多源源DA(MDA)问题,尽管现有的MDA战略大多依赖于多领域歧视设置,但对潜在空间代表的影响却知之甚少。我们在此采用一种信息理论方法,确定和解决多领域歧视对MDA的潜在不利影响:域差异信息的解体、有限的计算可扩展性以及培训期间损失的梯度差异很大。我们通过在信息正规化中设置对抗性DA(MDA)来审查上述问题。这也为使用单一和统一的域歧视设置了理论依据。基于这一理念,我们实施了一种称作多源信息正规化适应网络(MIAN)的新型神经结构。大规模实验表明,MIAN尽管结构简单,但可靠和显著超越了其他最先进的方法。