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Image Recommendation Algorithm Using Feature-based Collaborative Filtering

机译:基于特征协同过滤的图像推荐算法

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摘要

As the multimedia contents market continues its rapid expansion, the amount of image contents used in mobile phone services, digital libraries, and catalog service is increasing remarkably. In spite of this rapid growth, users experience high levels of frustration when searching for the desired image. Even though new images are profitable to the service providers, traditional collaborative filtering methods cannot recommend them. To solve this problem, in this paper, we propose feature-based collaborative filtering (FBCF) method to reflect the user's most recent preference by representing his purchase sequence in the visual feature space. The proposed approach represents the images that have been purchased in the past as the feature clusters in the multi-dimensional feature space and then selects neighbors by using an inter-cluster distance function between their feature clusters. Various experiments using real image data demonstrate that the proposed approach provides a higher quality recommendation and better performance than do typical collaborative filtering and content-based filtering techniques.
机译:随着多媒体内容市场的持续快速发展,用于移动电话服务,数字图书馆和目录服务的图像内容数量显着增加。尽管增长迅速,但用户在搜索所需图像时仍会感到沮丧。即使新图像对服务提供商有利可图,传统的协作过滤方法也无法推荐它们。为了解决这个问题,在本文中,我们提出了基于特征的协同过滤(FBCF)方法,通过在视觉特征空间中表示用户的购买顺序来反映用户的最新偏好。所提出的方法将过去购买的图像表示为多维特征空间中的特征簇,然后通过使用其特征簇之间的簇间距离函数来选择邻居。使用实际图像数据进行的各种实验表明,与典型的协作过滤和基于内容的过滤技术相比,所提出的方法可提供更高的质量推荐和更好的性能。

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