The goal of the paper is to design active learning strategies which lead to domain adaptation under an assumption of covariate shift in the case of Lipschitz labeling function. Building on previous work by Mansour et al. (2009) we adapt the concept of discrepancy distance between source and target distributions to restrict the maximization over the hypothesis class to a localized class of functions which are performing accurate labeling on the source domain. We derive generalization error bounds for such active learning strategies in terms of Rademacher average and localized discrepancy for general loss functions which satisfy a regularity condition. A practical K-medoids algorithm that can address the case of large data set is inferred from the theoretical bounds. Our numerical experiments show that the proposed algorithm is competitive against other state-of-the-art active learning techniques in the context of domain adaptation, in particular on large data sets of around one hundred thousand images.
翻译:本文的目的是设计积极的学习策略,在Lipschitz标签功能中假设的共变式转换的情况下,导致领域适应。以Mansour等人(2009年)以前的工作为基础,我们调整了源和目标分布之间的差异距离概念,将假设类别和目标分布的最大化限制在对源域进行准确标签的局部功能类别。我们从Rademacher平均和符合常规条件的一般损失函数的局部差异中得出这种积极学习策略的概括性误差界限。从理论界限中推断出能够解决大数据集案例的实用K型类算法。我们的数字实验表明,拟议的算法在区域适应方面与其他最先进的主动学习技术相比具有竞争力,特别是在大约10万张图像的大型数据集方面。