基于加权二部图的不完全社交媒体社区图像人气预测

Xiang Niu, Lusong Li, Tao Mei, Jialie Shen, Ke Xu
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引用次数: 17

摘要

人气预测是网络中分析信息扩散的关键问题,尤其是在社交媒体社区中。最近,在Digg和YouTube上出现了一些定制的预测模型。然而,这些模型由于其独特的参数,很难移植到一个不完整的社交网站(如Flickr)。另外,由于Flickr的网络规模很大,很难得到所有的照片和整个网络。因此,我们正在寻找一种可以用于这种不完全网络的方法。受协同过滤方法-基于网络的推理(NBI)的启发,我们设计了一个带有未检测到的用户和项目的加权二部图来表示不完全网络中的资源分配过程。代替图像分析,我们提出了一个改进的跨学科模型,称为不完全基于网络的推理(INI)。使用Flickr 30个月的数据,我们发现与传统的NBI相比,所提出的INI能够将预测精度提高58.1%以上。我们将我们提出的INI方法应用于个性化广告应用,并表明它比传统的Flickr广告更具吸引力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Image Popularity in an Incomplete Social Media Community by a Weighted Bi-partite Graph
Popularity prediction is a key problem in networks to analyze the information diffusion, especially in social media communities. Recently, there have been some custom-build prediction models in Digg and YouTube. However, these models are hardly transplant to an incomplete social network site (e.g., Flickr) by their unique parameters. In addition, because of the large scale of the network in Flickr, it is difficult to get all of the photos and the whole network. Thus, we are seeking for a method which can be used in such incomplete network. Inspired by a collaborative filtering method-Network-based Inference (NBI), we devise a weighted bipartite graph with undetected users and items to represent the resource allocation process in an incomplete network. Instead of image analysis, we propose a modified interdisciplinary models, called Incomplete Network-based Inference (INI). Using the data from 30 months in Flickr, we show the proposed INI is able to increase prediction accuracy by over 58.1%, compared with traditional NBI. We apply our proposed INI approach to personalized advertising application and show that it is more attractive than traditional Flickr advertising.
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