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学习图像的个性化内转换偏好。

Learning the Personalized Intransitive Preferences of Images.

出版信息

IEEE Trans Image Process. 2017 Sep;26(9):4139-4153. doi: 10.1109/TIP.2017.2709941.

DOI:10.1109/TIP.2017.2709941
PMID:28650799
Abstract

Most of the previous studies on the user preferences assume that there is a personal transitive preference ranking of the consumable media like images. For example, the transitivity of preferences is one of the most important assumptions in the recommender system research. However, the intransitive relations have also been widely observed, such as the win/loss relations in online video games, in sport matches, and even in rock-paper-scissors games. It is also found that different subjects demonstrate the personalized intransitive preferences in the pairwise comparisons between the applicants for college admission. Since the intransitivity of preferences on images has barely been studied before and has a large impact on the research of personalized image search and recommendation, it is necessary to propose a novel method to predict the personalized intransitive preferences of images. In this paper, we propose the novel Multi-Criterion preference (MuCri) models to predict the intransitive relations in the image preferences. The MuCri models utilize different kinds of image content features as well as the latent features of users and images. Meanwhile, a new data set is constructed in this paper, in order to evaluate the performance of the MuCri models. The experimental evaluation shows that the MuCri models outperform all the baselines. Due to the interdisciplinary nature of this topic, we believe it would widely attract the attention of researchers in the image processing community as well as in other communities, such as machine learning, multimedia, and recommender system.

摘要

大多数关于用户偏好的先前研究都假设存在一种个人传递性的消费媒体偏好排序,例如图像。例如,偏好的传递性是推荐系统研究中最重要的假设之一。然而,也广泛观察到了非传递性关系,例如在线视频游戏、体育比赛甚至石头剪刀布游戏中的胜负关系。还发现,在大学入学申请人的成对比较中,不同的主体表现出个性化的非传递性偏好。由于之前对图像的非传递性偏好几乎没有研究,并且对个性化图像搜索和推荐的研究有很大影响,因此有必要提出一种新的方法来预测图像的个性化非传递性偏好。在本文中,我们提出了新颖的多标准偏好(MuCri)模型来预测图像偏好中的非传递关系。MuCri 模型利用不同类型的图像内容特征以及用户和图像的潜在特征。同时,本文构建了一个新的数据集,以评估 MuCri 模型的性能。实验评估表明,MuCri 模型优于所有基线。由于这个主题的跨学科性质,我们相信它将广泛吸引图像处理社区以及其他社区(如机器学习、多媒体和推荐系统)的研究人员的关注。

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