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Mining hidden community in heterogeneous social networks

机译:在异构社交网络中挖掘隐藏社区

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Social network analysis has attracted much attention in recent years. Community mining is one of the major directions in social network analysis. Most of the existing methods on community mining assume that there is only one kind of relation in the network, and moreover, the mining results are independent of the users' needs or preferences. However, in reality, there exist multiple, heterogeneous social networks, each representing a particular kind of relationship, and each kind of relationship may play a distinct role in a particular task. Thus mining networks by assuming only one kind of relation may miss a lot of valuable hidden community information and may not be adaptable to the diverse information needs from different users.In this paper, we systematically analyze the problem of mining hidden communities on heterogeneous social networks. Based on the observation that different relations have different importance with respect to a certain query, we propose a new method for learning an optimal linear combination of these relations which can best meet the user's expectation. With the obtained relation, better performance can be achieved for community mining. Our approach to social network analysis and community mining represents a major shift in methodology from the traditional one, a shift from single-network, user-independent analysis to multi-network, user-dependant, and query-based analysis. Experimental results on Iris data set and DBLP data set demonstrate the effectiveness of our method.
机译:近年来,社交网络分析吸引了很多关注。社区挖掘是社交网络分析的主要方向之一。现有的大多数社区挖掘方法都假设网络中只有一种关系,而且挖掘结果与用户的需求或偏好无关。但是,实际上,存在多个异构的社交网络,每个社交网络代表一种特定的关系,每种关系在特定任务中可能扮演不同的角色。因此,仅假设一种关系的挖掘网络可能会丢失大量有价值的隐藏社区信息,并且可能无法适应来自不同用户的多样化信息需求。本文系统地分析了异构社交网络上挖掘隐藏社区的问题。基于观察到不同关系对某个查询的重要性不同的观点,我们提出了一种新的方法来学习这些关系的最佳线性组合,从而可以最好地满足用户的期望。通过获得的关系,可以实现社区采矿的更好性能。我们的社交网络分析和社区挖掘方法代表了方法论从传统方法的重大转变,即从单网络,用户无关的分析到多网络,用户依赖和基于查询的分析的转变。在虹膜数据集和DBLP数据集上的实验结果证明了该方法的有效性。

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