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Exploring Structural Features in Predicting Social Network Evolution

机译:探索预测社交网络演变的结构特征

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In this paper, we present a novel approach to incorporate the activity features in measuring the influence of member activities on the social network evolution. Conventional methods analyze social networks and make predictions based on all cumulative members and activities. However, since inactive members do not contribute to the network growth, including them in analysis can lead to less accurate results. Based on this observation, we propose to focus on the active population and explore the influence of member activities. We present a model that can incorporate various activity features and predict the evolution of the social activity. At the same time, an algorithm is adopted to select the most influential activity features. The experiments on two different types of social network show that the activity features can predict the evolution of the social activity accurately and our algorithm is effective to select the most influential features. Additionally, we find that the most significant activity features to determine the network evolution vary among different types of social network.
机译:在本文中,我们提出了一种新颖的方法来结合活动特征,以衡量成员活动对社交网络演化的影响。传统方法分析社交网络并根据所有累积成员和活动进行预测。但是,由于不活动的成员不会对网络的增长做出贡献,因此将他们包括在分析中可能会导致结果准确性降低。基于此观察,我们建议关注活跃人口并探讨会员活动的影响。我们提出了一个可以纳入各种活动特征并预测社交活动演变的模型。同时,采用一种算法来选择最具影响力的活动特征。在两种不同类型的社交网络上进行的实验表明,活动特征可以准确地预测社交活动的演变,并且我们的算法可以有效地选择最具影响力的特征。此外,我们发现,决定网络演变的最重要的活动功能在不同类型的社交网络之间也有所不同。

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