Existing domain adaptation focuses on transferring knowledge between domains with categorical indices (e.g., between datasets A and B). However, many tasks involve continuously indexed domains. For example, in medical applications, one often needs to transfer disease analysis and prediction across patients of different ages, where age acts as a continuous domain index. Such tasks are challenging for prior domain adaptation methods since they ignore the underlying relation among domains. In this paper, we propose the first method for continuously indexed domain adaptation. Our approach combines traditional adversarial adaptation with a novel discriminator that models the encoding-conditioned domain index distribution. Our theoretical analysis demonstrates the value of leveraging the domain index to generate invariant features across a continuous range of domains. Our empirical results show that our approach outperforms the state-of-the-art domain adaption methods on both synthetic and real-world medical datasets.
翻译:现有领域适应的重点是在具有绝对指数的领域(例如数据集A和B)之间转让知识。然而,许多任务涉及不断索引化的领域。例如,在医疗应用方面,常常需要在不同年龄的病人之间传输疾病分析和预测,因为年龄是连续域指数。这些任务对先前领域适应方法具有挑战性,因为它们忽视了各领域之间的根本关系。在本文件中,我们提出了持续索引化域适应的第一个方法。我们的方法将传统的对抗性适应与一个新的歧视者结合起来,该歧视者将编码化的域指数分布模型结合起来。我们的理论分析表明,利用域指数在一系列连续的领域中产生变量特征的价值。我们的经验结果表明,我们的方法在合成和现实世界医学数据集方面都超越了最先进的域适应方法。