利用递归神经网络预测社会网络中的意见

Mohamed N. Zareer, R. Selmic
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引用次数: 0

摘要

本文通过观点动态的视角研究了社交媒体网络中观点的传播。随着越来越多的人际互动和公共话语转移到网上,了解社交媒体中的意见形成和演变对于虚拟营销、信息传播和社会安全等问题至关重要。我们介绍了一种使用递归神经网络(RNN)来监测和预测这些网络中的相互作用的新方法。我们的方法使用两种配置的RNN算法来预测在线社交网络中代理的意见,结果表明它在预测不同意见方面是有效的。第一个配置使用sigmoid激活函数来预测二进制意见输出(同意,不同意),而第二个配置使用softmax函数来预测更详细的意见。对于模拟结果,我们考虑在Twitter网络中就COVID-19主题进行交互的一组五个代理。捕获了30天的社会互动,并验证了使用RNN的意见动态预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Opinions in Social Networks Using Recurrent Neural Networks
This paper studies the spread of opinions in social media networks through the lens of opinion dynamics. As more human interactions and public discourse move online, understanding opinion formation and evolution in social media is crucial for issues such as virtual marketing, information dissemination, and social security. We introduce a novel approach using recurrent neural networks (RNN) to monitor and predict interactions in these networks. Our method uses two configurations of RNN algorithms to predict the opinions of agents in an online social network, with results showing its effectiveness in predicting diverse opinions. The first configuration uses a sigmoid activation function to predict the binary opinions output (agree, disagree), while the second configuration uses the softmax function to predict more detailed opinions. For the simulation results, we considered a group of five agents interacting in the Twitter network on the subject of COVID-19. The social interaction for a 30-day period was captured and opinion dynamics prediction using the RNN was verified.
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