新媒体政策信息人气预测框架

Yin Luo, Fangfang Wang, Feifei Zhao, Jianbin Guo, Lei Wang, Yanni Hao, D. Zeng
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引用次数: 1

摘要

随着新媒体的快速发展和广泛应用,预测政策信息在新媒体上的受欢迎程度对于理解和管理民意具有重要意义。然而,政策信息传播模式的复杂性给预测政策信息的普及带来了很大的挑战。受社交网络短文本信息流行度预测方法的启发,我们提出了一个政策信息流行度预测的框架。在我们的框架中,首先从语境信息、社会信息和文本信息三个维度提取政策信息的特征。然后,通过实证分析,找出话题分布、人气竞争强度、热点信息相关性等有效特征。最后将有效特征输入到预测模型中,对政策信息的受欢迎程度进行预测。实验结果表明,该框架可以有效地预测政策信息的受欢迎程度,并且我们使用的特征有效地提高了政策信息受欢迎程度预测的准确性。准确的预测结果可以使决策者受益,使他们能够更好地做出决策,了解和管理民意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework for Policy Information Popularity Prediction in New Media
With the rapid development and wide application of new media, predicting the popularity of policy information on new media is of great significance for understanding and managing public opinion. However, the complexity of the diffusion patterns of policy information has brought great challenges for predicting the popularity of such information. Inspired by the methods of popularity prediction for short text information from social networks, we propose a framework for the popularity prediction of policy information. In our framework, first, the features of policy information are extracted from three dimensions: contextual information, social information and textual information. Then, effective features, such as the topic distribution, popularity competition intensity and hot information relevance, are identified by empirical analysis. Finally, the effective features are input into the prediction model to predict the popularity of policy information. We evaluate the performance of our proposed framework using a real-world dataset and the experimental results show that the framework can efficiently predict the popularity of policy information and that the features that we used are effective in improving the accuracy of policy information popularity prediction. The accurate prediction result could benefit policy makers, allowing them to make better decisions, understand and manage public opinion.
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