Zeng An, Yeung Chi Ho
School of Systems Science, Beijing Normal University, Beijing, People's Republic of China.
Department of Science and Environmental Studies, The Education University of Hong Kong, Taipo, Hong Kong.
Chaos. 2016 Jun;26(6):063102. doi: 10.1063/1.4953013.
Conventional approaches to predict the future popularity of products are mainly based on extrapolation of their current popularity, which overlooks the hidden microscopic information under the macroscopic trend. Here, we study diffusion processes on consumer-product and citation networks to exploit the hidden microscopic information and connect consumers to their potential purchase, publications to their potential citers to obtain a prediction for future item popularity. By using the data obtained from the largest online retailers including Netflix and Amazon as well as the American Physical Society citation networks, we found that our method outperforms the accurate short-term extrapolation and identifies the potentially popular items long before they become prominent.
预测产品未来受欢迎程度的传统方法主要基于对其当前受欢迎程度的推断,而这忽略了宏观趋势下隐藏的微观信息。在此,我们研究消费品和引用网络上的扩散过程,以利用隐藏的微观信息,并将消费者与其潜在购买行为联系起来,将出版物与其潜在引用者联系起来,从而获得对未来物品受欢迎程度的预测。通过使用从包括奈飞和亚马逊在内的最大在线零售商以及美国物理学会引用网络获得的数据,我们发现我们的方法优于准确的短期推断,并且能在潜在热门物品变得突出之前很久就识别出它们。