情报科学 ›› 2022, Vol. 39 ›› Issue (1): 38-43.

• 理论研究 • 上一篇    下一篇

基于信息关联的负面网络舆情风险分级与预测研究 

  

  • 出版日期:2022-01-01 发布日期:2022-01-12

  • Online:2022-01-01 Published:2022-01-12

摘要: 【目的/意义】网络社会充斥大量负面网络舆情,负面网络舆情风险分级和研判对提高网络治理能力和网络
社会治理成效意义重大。【方法
/过程】构建负面网络舆情风险指标体系,并采用熵权法计算风险指标权重;基于加
GRA模型计算灰色加权信息关联度,在此基础上,运用k-means聚类算法构建负面网络舆情风险分级方案,据此
对负面网络舆情进行风险预测。【结果
/结论】实证分析结果表明,所建负面网络舆情风险分级模型客观性强、可靠
度高,可为负面网络舆情风险精准响应提供有效决策依据。【创新
/局限】以信息关联为视角,为负面网络舆情风险
分级与预测提供了新的研究框架,但典型案例数据库有待继续完善。

Abstract: 【Purpose/significance】The network society is full of many negative network public opinions. The risk classification and judgment of negative network public opinion is of great significance to improve the ability of network governance and the effectiveness of network social governance.【Method/process】The risk index system of negative network public opinion is constructed, and the en⁃tropy weight method is used to calculate the weight of risk index; the grey weighted information correlation degree is calculated based on the weighted GRA model, and on this basis, the k-means clustering algorithm is used to construct the risk classification scheme of negative network public opinion, and then the risk prediction of negative network public opinion is carried out.【Result/conclusion】The results of empirical analysis show that the model has strong objectivity and high reliability, which can provide effective decisionmaking basis for accurate response of negative network public opinion risk.【Innovation/limitation】From the perspective of Informa⁃tion Association, it provides a new research framework for risk classification and prediction of negative Internet public opinion, but the typical case database needs to be improved.