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Effective Social Circle Prediction Based on Bayesian Network

机译:基于贝叶斯网络的有效社交圈预测

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User's personal social networks are big and cluttered, yet contain highly valuable information. Organizing users' friends into circles or communities is a fundamental task in social network research. Social network sites allow users to manually categorize their friends into social circles, however this process is laborious and inadaptable to changes. In this paper, we study novel ways of automatically determining users' social circles. We treat this task as a classification problem on a user's ego-network, a network of connections between friends. Based on Bayesian Network (BN), we develop a model for determining whether a query user Uq is in main user Um's social circle. First, we transform the original social network data to make it suitable for BN modeling, and build an Initial Bayesian Network (IBN) of Um using the state-of-the-art BN learning algorithm. Then, we propose a new method to improve the IBN by adding important parents to the class variable. Lastly, leveraging carefully designed threshold, we use the final BN to determine the existence of Uq in the social circle of U. Modeling social circle with BN allows us to quantify user's social circle existence with probability and run query with missing values/evidences. Using ground-truth data from Facebook and Twitter, experimental results indicate that our BN model could accurately determine user's existence in social circle and outperforms four baseline predictors, namely Naïve Bayes, IBL, OneR and J48, showing promising application potential in the social circle research area.
机译:用户的个人社交网络庞大而混乱,但包含非常有价值的信息。在社交网络研究中,将用户的朋友组织成圈子或社区是一项基本任务。社交网站允许用户将他们的朋友手动分类到社交圈中,但是此过程既费力又不适应更改。在本文中,我们研究了自动确定用户社交圈的新颖方法。我们将此任务视为用户的自我网络(朋友之间的联系网络)上的分类问题。基于贝叶斯网络(BN),我们开发了一种用于确定查询用户Uq是否在主要用户Um的社交圈中的模型。首先,我们将原始的社交网络数据转换为适合BN建模的数据,然后使用最新的BN学习算法构建Um的初始贝叶斯网络(IBN)。然后,我们提出了一种通过在类变量中添加重要的父级来改进IBN的新方法。最后,利用精心设计的阈值,我们使用最终的BN来确定U社交圈中Uq的存在。使用BN建模社交圈可以使我们以概率来量化用户社交圈的存在,并使用缺失的值/证据来进行查询。使用来自Facebook和Twitter的真实数据,实验结果表明,我们的BN模型可以准确地确定用户在社交圈中的存在,并且胜过了NaïveBayes,IBL,OneR和J48的四个基线预测指标,显示了在社交圈研究中的潜在应用潜力区域。

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