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    朱海龙, 云晓春, 韩志帅. 基于传播加速度的微博流行度预测方法[J]. 计算机研究与发展, 2018, 55(6): 1282-1293. DOI: 10.7544/issn1000-1239.2018.20161057
    引用本文: 朱海龙, 云晓春, 韩志帅. 基于传播加速度的微博流行度预测方法[J]. 计算机研究与发展, 2018, 55(6): 1282-1293. DOI: 10.7544/issn1000-1239.2018.20161057
    Zhu Hailong, Yun Xiaochun, Han Zhishuai. Weibo Popularity Prediction Method Based on Propagation Acceleration[J]. Journal of Computer Research and Development, 2018, 55(6): 1282-1293. DOI: 10.7544/issn1000-1239.2018.20161057
    Citation: Zhu Hailong, Yun Xiaochun, Han Zhishuai. Weibo Popularity Prediction Method Based on Propagation Acceleration[J]. Journal of Computer Research and Development, 2018, 55(6): 1282-1293. DOI: 10.7544/issn1000-1239.2018.20161057

    基于传播加速度的微博流行度预测方法

    Weibo Popularity Prediction Method Based on Propagation Acceleration

    • 摘要: 微博流行度预测是根据微博早期的传播特征来预测其未来的传播范围.目前的主要方法是根据信息早期传播的流行度进行预测,忽略了传播速度变化的趋势,这导致此类方法在预测微博消息未来流行度时准确性较差.为了更准确和方便地预测微博未来流行度,提出了一个多元线性回归模型:用户活跃度及传播加速度(user activity propagation acceleration, UAPA)模型.首先,研究了未来流行度与早期传播趋势变化的联系,发现两者存在正相关关系,根据这个发现,提出了传播加速度的概念,并基于传播加速度和早期流行度建立了预测模型.然后,分析了微博用户周期性的活动现象并发现用户转发数量在一天的不同时刻差异很大,传播加速度和流行度也不同.基于这种情况,根据用户活跃性优化了预测模型.最后在2个真实数据集(分别有100万和41万条微博)上对比了UAPA模型与业内代表性流行度预测方法的预测准确度,分析了模型中参数取值对于预测效果的影响.实验表明:提出的UAPA模型在多个性能指标上都优于现有方法.

       

      Abstract: Weibo popularity prediction attempts to forecast the future diffusion range of Weibo messages based on the propagation features at early stages. The existing methods are mainly depended on messages’ early popularity, ignoring the propagation trend at that time, which leads to poor predicting accuracy when these methods applied on Weibo messages. For the purpose of forecasting the Weibo popularity more accurately and conveniently, we propose a multiple linear regression model: UAPA (user activity propagation acceleration) in this paper. Firstly, we investigate the relationship between future popularity and varying trend of Weibo diffusion, and find that they are positive correlation. Based on this detection, we present the concept of propagation acceleration which describes the spreading varying speed of Weibo, then we build a predicting model based on propagation acceleration and popularity at early stages. Furthermore, we analyze the Weibo user periodic activity and find that the retweeting times of users vary greatly at different time in one day, and the messages’ popularity and propagation acceleration are also distinct at various moments. In the light of this finding, we optimize the predicting model by user activity. Finally, we compare prediction accuracy of UAPA model mentioned above with representative popularity prediction methods on two real datasets, with 1000 thousands and 410 thousands messages respectively, and discuss the influence of parameter value in UAPA model on prediction performance. Experiments show that UAPA model is superior to the existing methods on multiple indicators.

       

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