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Quantitative predicting propagation breadth and depth of microblog users' forwarding behavior

机译:定量预测传播广度和微博用户转发行为的深度

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摘要

In the microblog network, users' forwarding behavior is widespread and the propagation range is difficult to predict quantitatively. To solve this problem, machine learning algorithms are used to quantitatively predict propagation breadth and depth of microblog users' forwarding behavior. The dataset is preprocessed, and the extracted features are divided into three types: user features, microblog features and social features. Then the dataset is analyzed in detail; machine learning algorithms are used to predict the propagation breadth and depth of users' forwarding behavior; and the influence of the three types of features on prediction precision is studied. The experimental results show that the prediction precision of the improved random forest algorithm has less fluctuations, and it is not sensitive to the changes of various features. The improved random forest algorithm has higher precision and better generalization ability than the other algorithms, which shows that the prediction results have high reference value. Social features have the greatest influence on the prediction precision for each prediction algorithm. User features have the similar influence as microblog features on the prediction precision.
机译:在微博网络中,用户的转发行为是广泛的,并且传播范围难以定量地预测。为了解决这个问题,机器学习算法用于定量预测传播广度和深度的微博用户转发行为。数据集是预处理的,提取的功能分为三种类型:用户功能,微博功能和社交功能。然后详细分析数据集;机器学习算法用于预测用户转发行为的传播广度和深度;研究了三种类型特征对预测精度的影响。实验结果表明,改进的随机林算法的预测精度具有较小的波动,并且对各种特征的变化不敏感。改进的随机森林算法具有比其他算法更高的精度和更好的泛化能力,表明预测结果具有高参考值。社会特征对每种预测算法的预测精度有最大的影响。用户功能与预测精度的微博功能具有类似的影响。

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