Design of New Media Event Warning Method Based on K-means and Seasonal Optimization Algorithm

Zhenghan Gao, Anzhu Zheng
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Abstract

INTRODUCTION: Timely and effective early warning of new media events not only provides academic value to the study of new media events, but also can play a positive role in promoting the resolution of public opinion. OBJECTIVES: Aiming at the current research on early warning of new media events, there are problems such as the theoretical research is not in-depth and the early warning model is not comprehensive. METHOD: In this paper, K-means and seasonal optimization algorithm are used to construct new media event early warning method. Firstly, by analyzing the construction process of new media event early warning system, extracting text feature vector and carrying out text feature dimensionality reduction; then, combining with the random forest algorithm, the new media event early warning method based on intelligent optimization algorithm optimizing K-means clustering algorithm is proposed; finally, the validity and superiority of the proposed method is verified through the analysis of simulation experiments. RESULTS: The method developed in this paper improves the accuracy, time performance of new media event warning techniques. CONCLUSION: Addresses the lack of comprehensiveness of current approaches to early warning of new media events.
基于 K-means 和季节优化算法的新媒体事件预警方法设计
引言:及时有效的新媒体事件预警不仅为新媒体事件研究提供了学术价值,也能对舆情的解决起到积极的推动作用:针对当前新媒体事件预警研究存在理论研究不深入、预警模型不全面等问题。方法:本文采用K均值和季节优化算法构建新媒体事件预警方法。首先,通过分析新媒体事件预警系统的构建过程,提取文本特征向量并进行文本特征降维;然后,结合随机森林算法,提出了基于智能优化算法优化 K-means 聚类算法的新媒体事件预警方法;最后,通过仿真实验分析验证了所提方法的有效性和优越性。结果:本文所提出的方法提高了新媒体事件预警技术的准确性、时效性。结论:解决了当前新媒体事件预警方法缺乏全面性的问题。
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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