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A Query Approach for Influence Maximization on Specific Users in Social Networks

机译:社交网络中特定用户影响最大化的查询方法

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摘要

Influence maximization is introduced to maximize the profit of viral marketing in social networks. The weakness of influence maximization is that it does not distinguish specific users from others, even if some items can be only useful for the specific users. For such items, it is a better strategy to focus on maximizing the influence on the specific users. In this paper, we formulate an influence maximization problem as query processing to distinguish specific users from others. We show that the query processing problem is NP-hard and its objective function is submodular. We propose an expectation model for the value of the objective function and a fast greedy-based approximation method using the expectation model. For the expectation model, we investigate a relationship of paths between users. For the greedy method, we work out an efficient incremental updating of the marginal gain to our objective function. We conduct experiments to evaluate the proposed method with real-life datasets, and compare the results with those of existing methods that are adapted to the problem. From our experimental results, the proposed method is at least an order of magnitude faster than the existing methods in most cases while achieving high accuracy.
机译:引入影响力最大化以最大化社交网络中病毒式营销的利润。影响最大化的弱点在于,即使某些项目仅对特定用户有用,也无法将特定用户与其他用户区分开。对于此类项目,最好是集中精力最大化对特定用户的影响。在本文中,我们将影响力最大化问题表达为查询处理,以区分特定用户与其他用户。我们证明查询处理问题是NP难的,其目标函数是亚模的。我们提出了目标函数值的期望模型,以及使用期望模型的基于贪婪的快速近似方法。对于期望模型,我们调查用户之间的路径关系。对于贪婪方法,我们计算出边际收益向目标函数的有效增量更新。我们进行实验,以评估带有真实数据集的拟议方法,并将结果与​​适合该问题的现有方法进行比较。从我们的实验结果来看,在大多数情况下,所提出的方法比现有方法至少快一个数量级,同时实现了高精度。

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