Abstra'/> Community clustering based on trust modeling weighted by user interests in online social networks
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Community clustering based on trust modeling weighted by user interests in online social networks

机译:基于信任建模的社区群集在线社交网络中的用户兴趣加权

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Abstract Online social networking websites provide platforms through which users can express opinions and preferences on a multitude of items and topics, and follow users and information, and flood it by retweeting. User-user interests vary, and based on the users’ interests, they can be grouped to multiple implicit interest communities. However, every interaction and user may not be trustworthy. Capturing the user's interaction with others, and predicting user interest and trust from the interactions are important parts of social media analytics. In this paper, we propose community clustering for implicit community detection based on trust and interest modeling. The trust modeling is weighted by the user's interests to group the users in multiple clusters having higher interest and trust similarity within a cluster. The proposed community clustering algorithm begins by ranking the nodes by the weighted degree and then selecting the initial community centers that are not in the neighbors of each other's. We then assign the user to the community with whom the user has the higher interest and trust similarity and higher common connections topology. We provide a probabilistic trust model to predict the unknown reliable trust between users considering their friends. We model user interests based on preferences and opinions, as well as the content experienced in social media. Furthermore, we evaluate the proposed algorithm comparing publicly available datasets with well-known algorithms for clustering quality. ]]>
机译:<![cdata [ Abstract 在线社交网络网站提供用户通过哪些平台,通过该平台通过该平台,用户可以在众多项目和主题上表达意见和偏好,以及遵循用户和信息和洪水它通过转发。用户用户的兴趣不同,并根据用户的兴趣,它们可以分组为多个隐式兴趣社区。但是,每个互动和用户都可能不值得信赖。捕获用户与他人的互动,并预测用户兴趣和来自交互的信任是社交媒体分析的重要部分。在本文中,我们提出了基于信任和利息建模的隐性社区检测的社区聚类。信任建模是由用户的兴趣加权,以将用户中的多个集群分组,其中包含较高的群集和群集中的信任相似性。所提出的社区聚类算法首先通过加权程度排列节点,然后选择不在彼此邻居的初始社区中心。然后,我们将用户分配给用户具有更高兴趣和信任相似性和更高的共同连接拓扑的社区。我们提供了一个概率的信任模型,以预测考虑他们的朋友的用户之间未知的可靠信任。我们根据首选项和意见以及社交媒体所遇到的内容来模拟用户兴趣。此外,我们评估所提出的算法,将公共可用数据集与众所周知的算法进行比较,以进行聚类质量。 ]]>

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