Research on Social Network Inference Method Based on ConNIe Algorithm

Hailiang Chen, B. Chen, Jian Dong, Lingnan He
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引用次数: 1

Abstract

In recent years, Internet technology and online social networks have developed rapidly, enabling people to express their opinions, ideas, emotional exchanges and economic exchanges randomly. Inferences about social networks are made possible by observational data exchanged by people on the Internet. In this paper, through the analysis of ConNIe algorithm, the effects of sparse parameter, propagation time distribution model and its parameters on the inferred results of this algorithm are studied. Then, based on the research, this paper use perceptron algorithm to classify the propagation time distribution model and use particle swarm optimization algorithm to optimize the sparse parameter and the parameters of propagation time distribution model. Finally, a social network inference framework based on ConNIe algorithm is proposed to make up for ConNIe. Some of the shortcomings of the algorithm have gotten over. The research in this paper helps people to understand the social network itself, and it has a wide range of practical value in the fields of social public opinion control and marketing.
基于康妮算法的社会网络推理方法研究
近年来,互联网技术和在线社交网络发展迅速,人们可以随意表达自己的观点、想法、情感交流和经济交流。人们在互联网上交换的观察数据使得对社交网络的推断成为可能。本文通过对ConNIe算法的分析,研究了稀疏参数、传播时间分布模型及其参数对该算法推断结果的影响。然后,在研究的基础上,利用感知机算法对传播时间分布模型进行分类,并利用粒子群优化算法对传播时间分布模型的稀疏参数和参数进行优化。最后,提出了一种基于康妮算法的社会网络推理框架来弥补康妮的不足。该算法的一些缺点已经克服。本文的研究有助于人们了解社交网络本身,在社会舆论控制和营销等领域具有广泛的实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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