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Conditional Adversarial Networks for Multi-Domain Text Classification

机译:用于多域文本分类的条件对抗网络

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In this paper, we propose conditional adversarial networks (CANs), a framework that explores the relationship between the shared features and the label predictions to impose stronger discriminability to the learned features, for multi-domain text classification (MDTC). The proposed CAN introduces a conditional domain discriminator to model the domain variance in both the shared feature representations and the class-aware information simultaneously, and adopts entropy conditioning to guarantee the transferability of the shared features. We provide theoretical analysis for the CAN framework, showing that CAN's objective is equivalent to minimizing the total divergence among multiple joint distributions of shared features and label predictions. Therefore, CAN is a theoretically sound adversarial network that discriminates over multiple distributions. Evaluation results on two MDTC benchmarks show that CAN outperforms prior methods. Further experiments demonstrate that CAN has a good ability to generalize learned knowledge to unseen domains.
机译:在本文中,我们提出了条件对抗网络(CAN),探讨了共享特征与标签预测之间的关系的框架,以对学习功能施加更强的辨别性,用于多域文本分类(MDTC)。所提出的可以引入条件域鉴别器,以同时为共享特征表示和类感知信息模拟域方差,并采用熵调节来保证共享特征的可转换性。我们为CAN框架提供了理论分析,表明可以的目标是相当于最小化共同特征和标签预测的多个联合分布之间的总分歧。因此,可以是理论上的声音对抗网络,其识别多个分布。评估结果两种MDTC基准表明,可以优于现有方法。进一步的实验表明,可以具有良好的能力将学众知识概括为看不见的域名。

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