Social influence prediction has permeated many domains, including marketing, behavior prediction, recommendation systems, and more. However, traditional methods of predicting social influence not only require domain expertise,they also rely on extracting user features, which can be very tedious. Additionally, graph convolutional networks (GCNs), which deals with graph data in non-Euclidean space, are not directly applicable to Euclidean space. To overcome these problems, we extended DeepInf such that it can predict the social influence of COVID-19 via the transition probability of the page rank domain. Furthermore, our implementation gives rise to a deep learning-based personalized propagation algorithm, called DeepPP. The resulting algorithm combines the personalized propagation of a neural prediction model with the approximate personalized propagation of a neural prediction model from page rank analysis. Four social networks from different domains as well as two COVID-19 datasets were used to demonstrate the efficiency and effectiveness of the proposed algorithm. Compared to other baseline methods, DeepPP provides more accurate social influence predictions. Further, experiments demonstrate that DeepPP can be applied to real-world prediction data for COVID-19.
翻译:社会影响预测已渗透到许多领域,包括市场营销、行为预测、建议系统等等。然而,预测社会影响的传统方法不仅需要领域专长,而且还依赖提取用户特征,这些特征可能非常乏味。此外,涉及非欧洲大陆空间的图象数据的图象进化网络(GCNs)并不直接适用于欧洲大陆空间。为解决这些问题,我们扩展了DeepInf,以便通过页面级域的转换概率预测COVID-19的社会影响。此外,我们的实施还产生了一种深层次的基于学习的个人化个人化传播算法,称为DeepPPP。由此产生的算法将神经预测模型的个人化传播与页级分析中神经预测模型的近乎个性化传播结合起来。使用了来自不同领域的四个社会网络以及两个COVID-19数据集来证明拟议的算法的效率和有效性。与其他基线方法相比,DeepPP提供了更准确的社会影响预测。此外,实验还表明,深PPP可以应用于COVID-19实际世界预测数据。