Domain adaptation algorithms are designed to minimize the misclassification risk of a discriminative model for a target domain with little training data by adapting a model from a source domain with a large amount of training data. Standard approaches measure the adaptation discrepancy based on distance measures between the empirical probability distributions in the source and target domain. In this setting, we address the problem of deriving generalization bounds under practice-oriented general conditions on the underlying probability distributions. As a result, we obtain generalization bounds for domain adaptation based on finitely many moments and smoothness conditions.
翻译:域适应算法旨在将目标领域歧视性模式的分类错误风险降到最低,因为目标领域的培训数据很少,办法是对来源领域的模型进行调整,从大量培训数据的来源领域进行调整。标准方法根据源和目标领域的经验概率分布之间的距离测量适应差异。在这一背景下,我们处理在面向实践的一般条件下,根据基本概率分布得出一般化界限的问题。结果,我们根据有限的许多时刻和平稳条件,获得了域适应的通用界限。