weibo_predict:本项目是采用Python语言结合机器学习中的常用算法来对微博传播过程中的转发进行预测

上传者: 42133415 | 上传时间: 2022-04-23 10:44:59 | 文件大小: 10.78MB | 文件类型: ZIP
weibo_predict 本项目是采用Python语言结合机器学习中的常用算法来对微博传播过程中的转发数进行预测。 主要做的工作有: 1.分别从微博转发广度和转发深度两个方面来对微博进行预测; 2.并对传播过程中可能出现峰值的时刻进行了预测研究; 3.通过对算法的改进使得算法的预测准确率得到了一定的提升; 4.通过使用图的方式来更直观的对比显示各算法之间的优劣性;

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