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Comparative Deep Learning of Hybrid Representations for Image Recommendations

机译:图像表示的混合表示的比较深度学习

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In many image-related tasks, learning expressive and discriminative representations of images is essential, and deep learning has been studied for automating the learning of such representations. Some user-centric tasks, such as image recommendations, call for effective representations of not only images but also preferences and intents of users over images. Such representations are termed hybrid and addressed via a deep learning approach in this paper. We design a dual-net deep network, in which the two sub-networks map input images and preferences of users into a same latent semantic space, and then the distances between images and users in the latent space are calculated to make decisions. We further propose a comparative deep learning (CDL) method to train the deep network, using a pair of images compared against one user to learn the pattern of their relative distances. The CDL embraces much more training data than naive deep learning, and thus achieves superior performance than the latter, with no cost of increasing network complexity. Experimental results with real-world data sets for image recommendations have shown the proposed dual-net network and CDL greatly outperform other state-of-the-art image recommendation solutions.
机译:在许多与图像相关的任务中,学习图像的表现性和区分性表示至关重要,并且已经研究了深度学习以使这种表示的学习自动化。一些以用户为中心的任务,例如图像推荐,不仅需要有效表示图像,而且还需要有效表示用户对图像的偏好和意图。在本文中,这种表示称为混合,并通过深度学习方法解决。我们设计了一个双网深层网络,其中两个子网将输入图像和用户偏好映射到相同的潜在语义空间中,然后计算潜在空间中图像与用户之间的距离以做出决策。我们进一步提出了一种比较深度学习(CDL)方法来训练深度网络,该方法使用与一个用户进行比较的一对图像来学习其相对距离的模式。与幼稚的深度学习相比,CDL包含的训练数据要多得多,因此可实现比后者更好的性能,而无需增加网络复杂性。具有用于图像推荐的真实数据集的实验结果表明,建议的双网网络和CDL大大优于其他最新的图像推荐解决方案。

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