学习用于领域适应的分离语义表征

Ruichu Cai, Zijian Li, Pengfei Wei, Jie Qiao, Kun Zhang, Zhifeng Hao
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引用次数: 0

摘要

领域适应是一项重要但极具挑战性的任务。现有的大多数领域适配方法都难以在具有纠缠领域信息和语义信息的特征空间上提取领域不变表示。与以往在纠缠特征空间上所做的努力不同,我们的目标是在数据的潜在非纠缠语义表示(DSR)中提取领域不变的语义信息。在 DSR 中,我们假设数据生成过程由两组独立的变量控制,即语义潜变量和领域潜变量。在上述假设下,我们采用变分自动编码器来重构数据背后的语义潜变量和领域潜变量。我们进一步设计了一个双对抗网络,以拆分这两组重建的潜变量。最后,被分解的语义潜变量将被跨域调整。实验研究证明,我们的模型在多个领域适应基准数据集上取得了一流的性能。
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Learning Disentangled Semantic Representation for Domain Adaptation.

Domain adaptation is an important but challenging task. Most of the existing domain adaptation methods struggle to extract the domain-invariant representation on the feature space with entangling domain information and semantic information. Different from previous efforts on the entangled feature space, we aim to extract the domain invariant semantic information in the latent disentangled semantic representation (DSR) of the data. In DSR, we assume the data generation process is controlled by two independent sets of variables, i.e., the semantic latent variables and the domain latent variables. Under the above assumption, we employ a variational auto-encoder to reconstruct the semantic latent variables and domain latent variables behind the data. We further devise a dual adversarial network to disentangle these two sets of reconstructed latent variables. The disentangled semantic latent variables are finally adapted across the domains. Experimental studies testify that our model yields state-of-the-art performance on several domain adaptation benchmark datasets.

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