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A Unified Adversarial Learning Framework for Semi-supervised Multi-target Domain Adaptation

机译:半监督多目标域适应统一的对抗学习框架

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Machine learning algorithms have been criticized as difficult to apply to new tasks or datasets without sufficient annotations. Domain adaptation is expected to tackle this problem by establishing knowledge transfer from a labeled source domain to an unlabeled or sparsely labeled target domain. Most existing domain adaptation models focus on the single-source-single-target scenario. However, the pair-wise domain adaptation approaches may lead to suboptimal performance when there are multiple target domains available, because the information from other related target domains is not being utilized. In this work, we propose a unified semi-supervised multi-target domain adaptation framework to implement knowledge transfer among multiple domains (a single source domain and multiple target domains). Specifically, we aim to learn an embedded space and minimize the marginal probability distribution differences among all domains in the space. Meanwhile, we introduce Prototypical Networks to perform classification, and extend it to semi-supervised settings. On this basis, we further align the conditional probability distributions among the domains by generating pseudo-labels for the unlabeled target data and training the model with bootstrapping method. Extensive sentiment analysis experiments show that our approach significantly outperforms several state-of-the-art methods.
机译:机器学习算法被批评难以应用于新任务或数据集,而没有充分的注释。预计域适应将通过将来自标记的源域的知识转移建立到未标记或稀疏标记的目标域来解决此问题。大多数现有域适应模型侧重于单源单位目标场景。然而,当有多个目标域时,对的一对域适应方法可能导致次优性能,因为没有使用来自其他相关目标域的信息。在这项工作中,我们提出了一个统一的半监督多目标域适应框架,以实现多个域(单个源域和多个目标域)之间的知识传输。具体而言,我们的目标是学习嵌入式空间,并最大限度地减少空间中所有域之间的边际概率分布差异。同时,我们介绍了原型网络以执行分类,并将其扩展为半监控设置。在此基础上,我们通过为未标记的目标数据生成伪标签并通过自动启动方法培训模型来进一步对齐域之间的条件概率分布。广泛的情绪分析实验表明,我们的方法显着优于几种最先进的方法。

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