预测社交网络服务中的信息扩散规模

Q4 Computer Science
Zheng-ren LI, Ting-jie LÜ, Wen-hua SHI, Xiao-hang ZHANG
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引用次数: 1

摘要

预测信息扩散规模是许多社交网络服务(SNS)运营商和企业面临的重要任务。本文考察了用户属性和社交网络属性两类指标对信息扩散规模预测准确性的影响,并研究了如何选择一个更能拟合真实数据、具有更高准确性的合适模型。实验结果表明,用户属性和社会网络结构属性对信息扩散规模都有显著影响。同时,本文构建了三种数据挖掘模型来预测信息扩散的规模,并比较了它们的预测精度。结果表明,神经网络模型比决策树模型和线性回归模型的性能要好得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the scale of information diffusion in social network services

Predicting the scale of information diffusion is an important task for many social network services (SNS) operators and enterprises. In this paper, the authors investigate the effects of two types of indicators, user attributes and social network attributes, and study on the accuracy of predicting the scale of information diffusion, and how to select an appropriate model that can fit real data better and have a higher accuracy. The experimental results show that both user attributes and social network structure attributes have significant effects on the scale of information diffusion. At the same time, three data mining models are constructed in this paper to predict the scale of information diffusion and compare their prediction accuracy. It is found that neural network model performs much better than decision tree and linear regression do.

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