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Personalized Recommendation of Social Images by Constructing a User Interest Tree With Deep Features and Tag Trees

机译:通过构建具有深层特征和标记树的用户兴趣树来个性化推荐社会图像

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摘要

In view of the great diversity and complexity of social images, it is of great significance to improve the performance of personalized recommendation by learning a user interest from large-scale social images. Deep learning, as the latest research in the field of artificial intelligence, provides a new personalized recommendation solution of social images for learning a users interest. Moreover, social image sharing websites (such as Flickr) allow users to tag uploaded images with tags. As an important image semantic cue, effective tags not only represent the latent image information but also show personalized user interest. Therefore, a personalized recommendation method of social image is proposed by constructing a user-interest tree with deep features and tag trees in this paper. The main contributions of our paper are as follows: first, to efficiently make use of tags, a tag tree of social images is created by the re-ranked tags; second, for compactly representing the image content, deep features are learned by training the AlexNet network; third, a user-interest tree is constructed with deep features and tag trees that include the user-interest tree of social images and the user-interest tree of tags, respectively, and finally, a personalized recommendation system of social images is built based on a user-interest tree. Experiments on the NUS-WIDE dataset have shown that our method outperforms state-of-the-art methods in terms of both precision and recall of personalized recommendations.
机译:鉴于社交图像的多样性和复杂性,通过从大规模社交图像中学习用户的兴趣来提高个性化推荐的性能具有重要意义。深度学习是人工智能领域的最新研究,它为社交图像提供了一种新的个性化推荐解决方案,以学习用户的兴趣。此外,社交图像共享网站(例如Flickr)允许用户使用标签来标记上传的图像。作为重要的图像语义提示,有效的标签不仅代表潜在的图像信息,而且还表现出个性化的用户兴趣。因此,本文通过构建具有深层特征的用户兴趣树和标签树,提出了一种个性化的社会形象推荐方法。本文的主要贡献如下:首先,为了有效利用标签,通过重新排列标签来创建社交图像的标签树。其次,为了紧凑地表示图像内容,可以通过训练AlexNet网络来学习深度功能。第三,构建具有深度特征的用户兴趣树和分别包含社交图像的用户兴趣树和标签的用户兴趣树的标签树,最后,基于该功能构建社交图像的个性化推荐系统。用户兴趣树。在NUS-WIDE数据集上进行的实验表明,我们的方法在准确性和个性化推荐的回忆方面均优于最新方法。

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