基于网络新闻流行语数据的预测模型

Xuandong Lei
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引用次数: 0

摘要

部分分类算法主要用于预测网络新闻的受欢迎程度,探索预测网络新闻受欢迎程度的最佳模型,从而帮助网络新闻服务商在新闻发布前预测其受欢迎程度。根据数据分析过程预测网络新闻的受欢迎程度:首先,对UCI数据集进行预处理;其次,采用递归特征消除算法对数据集进行特征选择;然后进行建模和分析,最后通过混淆矩阵、风险图和ROC (Receiver Operating Characteristic)图性能评价,对模型的性能进行比较分析。通过比较,发现随机森林是最好的预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction Model based on Internet News Buzzword Data
The partial classification algorithm is mainly used to predict the popularity of network news and to explore the best model to predict the popularity of network news, so as to help network news service providers predict the popularity of news before publication. The popularity of network news is predicted according to the data analysis process: first, UCI data sets are pre-processed; secondly, feature selection is conducted for the data sets by using recursive feature elimination algorithm; then modelling and analysis is carried out, and finally through the confusion matrix, risk map and ROC (Receiver Operating Characteristic) chart performance evaluation, the performance of the model is compared and analyzed. Through comparison, it is found that random forest is the best prediction model.
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