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Transfer Learning with Multiple Sources via Consensus Regularized Autoencoders

机译:通过共识正则化自动编码器转移多个来源的学习

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Knowledge transfer from multiple source domains to a target domain is crucial in transfer learning. Most existing methods are focused on learning weights for different domains based on the similarities between each source domain and the target domain or learning more precise classifiers from the source domain data jointly by maximizing their consensus of predictions on the target domain data. However, these methods only consider measuring similarities or building classifiers on the original data space, and fail to discover a more powerful feature representation of the data when transferring knowledge from multiple source domains to the target domain. In this paper, we propose a new framework for transfer learning with multiple source domains. Specifically, in the proposed framework, we adopt autoencoders to construct a feature mapping from an original instance to a hidden representation, and train multiple classifiers from the source domain data jointly by performing an entropy-based consensus regular-izer on the predictions on the target domain. Based on the framework, a particular solution is proposed to learn the hidden representation and classifiers simultaneously. Experimental results on image and text real-world datasets demonstrate the effectiveness of our proposed method compared with state-of-the-art methods.
机译:从多个源域到目标域的知识转移对于转移学习至关重要。大多数现有方法专注于基于每个源域和目标域之间的相似性来学习不同域的权重,或者通过最大化它们对目标域数据的预测共识,共同从源域数据中学习更精确的分类器。但是,这些方法仅考虑在原始数据空间上测量相似性或构建分类器,并且在将知识从多个源域转移到目标域时,无法发现数据的更强大的特征表示。在本文中,我们提出了一个用于多个源域的迁移学习的新框架。具体而言,在提出的框架中,我们采用自动编码器构造从原始实例到隐藏表示的特征映射,并通过对目标的预测执行基于熵的共识正则化器来联合训练源域数据中的多个分类器领域。基于该框架,提出了一种特殊的解决方案,可以同时学习隐藏的表示和分类器。在图像和文本真实数据集上的实验结果表明,与最新方法相比,我们提出的方法是有效的。

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