转发时间序列混沌分析的实现

Yuanyuan Bao, Chengqi Yi, Jingchi Jiang, Y. Xue, Yingfei Dong
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引用次数: 1

摘要

转发已经成为社交网络最突出的特征之一,也是内容二次推广的重要手段。现有对社交网络转发行为的研究大多基于实证研究或信息扩散模型(如随机过程或级联模型)。据我们所知,这样的转发过程还没有作为一个混沌过程进行研究。在本文中,我们首先通过0-1测试检查了转发时间序列,其结果提供了混沌行为的识别。进一步,考虑到已证明的混沌特性,采用混沌LS-SVM预测方法,仅利用一小部分转发时间序列形成预测。通过对新浪微博数据集的评估以及与贝叶斯模型和斯特拉曼模态的比较表明,该非线性预测方法可以转化为较好的步进预测,并且在转发预测中具有较高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of chaotic analysis on retweet time series
Retweet has become one of the most prominent feature on social networks and an important mean for secondary content promotion. Most existing investigations of retweet behaviors on social networks are conducted based on empirical studies or information diffusion models (such as stochastic process or cascading model). To the best of our knowledge, such a retweet process has not been investigated as a chaotic process. In this paper, we have first examined that retweet time series by 0-1 test where the results provide identification of chaotic behaviors. Furthermore, taking into account of the proven chaotic characteristic, chaos LS-SVM prediction method is applied to form predictions using only a small fraction of the retweet time series. Our evaluation on Sina Weibo dataset and comparisons with a bayesian model and strawman modal show that this nonlinear prediction method can translate to good step ahead forecasts and perform high accuracy in retweet prediction.
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