We present a novel privacy-preserving federated adversarial domain adaptation approach ($\textbf{PrADA}$) to address an under-studied but practical cross-silo federated domain adaptation problem, in which the party of the target domain is insufficient in both samples and features. We address the lack-of-feature issue by extending the feature space through vertical federated learning with a feature-rich party and tackle the sample-scarce issue by performing adversarial domain adaptation from the sample-rich source party to the target party. In this work, we focus on financial applications where interpretability is critical. However, existing adversarial domain adaptation methods typically apply a single feature extractor to learn feature representations that are low-interpretable with respect to the target task. To improve interpretability, we exploit domain expertise to split the feature space into multiple groups that each holds relevant features, and we learn a semantically meaningful high-order feature from each feature group. In addition, we apply a feature extractor (along with a domain discriminator) for each feature group to enable a fine-grained domain adaptation. We design a secure protocol that enables performing the PrADA in a secure and efficient manner. We evaluate our approach on two tabular datasets. Experiments demonstrate both the effectiveness and practicality of our approach.
翻译:我们提出了一个新的隐私保护联合对抗领域适应方法(textbf{Pradadad}$),以解决一个研究不足但实际的跨空间联合领域适应问题,即目标领域一方在样本和特征方面都不够充分;我们通过与具有丰富特征的一方进行纵向联合学习,扩大特征空间,从而解决功能欠缺问题,并通过对目标方进行抽样丰富来源方的对抗性领域适应,解决样本偏差问题。在这项工作中,我们侧重于解释性至关重要的财务应用。然而,现有的对抗性领域适应方法通常使用单一特征提取器来学习与目标任务有关的低可解释性特征表现。为了改进解释性,我们利用域专门知识将特征空间分成多个组,每个特征组都拥有相关特征,我们从每个特征组学习一个具有语义意义的高顺序特征特征特征特征特征。此外,我们为每个特征组都采用了一个特征提取器(连同一个域区分器),以便进行精确的地域适应。我们设计了一种安全性协议,在两个领域进行安全性ADAA上进行安全化评估。