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Cross-Domain Attribute Representation Based on Convolutional Neural Network

机译:基于卷积神经网络的跨域属性表示

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In the problem of domain transfer learning, we learn a model for the prediction in a target domain from the data of both some source domains and the target domain, where the target domain is in lack of labels while the source domain has sufficient labels. Besides the instances of the data, recently the attributes of data shared across domains are also explored and proven to be very helpful to leverage the information of different domains. In this paper, we propose a novel learning framework for domain-transfer learning based on both instances and attributes. We proposed to embed the attributes of different domains by a shared convolutional neural network (CNN), learn a domain-independent CNN model to represent the information shared by different domains by matching across domains, and a domain-specific CNN model to represent the information of each domain. The concatenation of the three CNN model outputs is used to predict the class label. An iterative algorithm based on gradient descent method is developed to learn the parameters of the model. The experiments over benchmark datasets show the advantage of the proposed model.
机译:在域转移学习的问题中,我们从一些源域和目标域的数据中学习了目标域中的预测模型,其中目标域缺少标签,而源域具有足够的标签。除了数据实例外,最近还探索了跨域共享的数据属性,并证明它们对利用不同域的信息非常有帮助。在本文中,我们提出了一种基于实例和属性的用于域转移学习的新颖学习框架。我们建议通过共享卷积神经网络(CNN)嵌入不同域的属性,通过跨域匹配来学习一个独立于域的CNN模型来表示不同域所共享的信息,以及一个特定于域的CNN模型来表示该信息每个域的三个CNN模型输出的串联用于预测类别标签。提出了一种基于梯度下降法的迭代算法来学习模型的参数。在基准数据集上进行的实验表明了该模型的优势。

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