论文标题

谁是下一步:通过扩散用户对社交网络的兴趣的新星预测

Who is next: rising star prediction via diffusion of user interest in social networks

论文作者

Yang, Xuan, Yang, Yang, Su, Jintao, Sun, Yifei, Fan, Shen, Wang, Zhongyao, Zhang, Jun, Chen, Jingmin

论文摘要

在在线市场中寻找有潜力增加销售的物品至关重要。在本文中,我们建议研究这个新颖的实用问题:新星预测。我们称这些潜在的物品后续恒星,这意味着它们将来有能力从低转变物品到畅销书。升起的明星可用于在电子商务平台上提供不公平的建议,平衡供求,以使零售商受益并合理地分配营销资源。尽管对后起之秀的研究可以带来巨大的好处,但它也给我们带来了挑战。与其他项目相比,崛起之星的销售趋势在短期内急剧波动,并且表现出由某些外部事件(例如,Covid-19引起的购买面罩的增加)所引起的偶然性,这是无法通过现有销售预测方法来解决的。为了应对上述挑战,在本文中,我们观察到,新星的存在与用户对社交网络的兴趣的早期扩散密切相关,这在Taocode的情况下得到了验证(Taocode(一种扩散了用户对TAOBAO的中介)。因此,我们提出了一个新颖的框架Risenet,将用户兴趣扩散过程与项目动态特征结合在一起,以有效预测升高的恒星。具体来说,我们采用耦合机制来捕获项目和用户兴趣之间的动态相互作用,以及一个特殊设计的基于GNN的框架来量化用户兴趣。我们对TAOBAO提供的大规模现实世界数据集的实验结果证明了我们提出的框架的有效性。

Finding items with potential to increase sales is of great importance in online market. In this paper, we propose to study this novel and practical problem: rising star prediction. We call these potential items Rising Star, which implies their ability to rise from low-turnover items to best-sellers in the future. Rising stars can be used to help with unfair recommendation in e-commerce platform, balance supply and demand to benefit the retailers and allocate marketing resources rationally. Although the study of rising star can bring great benefits, it also poses challenges to us. The sales trend of rising star fluctuates sharply in the short-term and exhibits more contingency caused by some external events (e.g., COVID-19 caused increasing purchase of the face mask) than other items, which cannot be solved by existing sales prediction methods. To address above challenges, in this paper, we observe that the presence of rising stars is closely correlated with the early diffusion of user interest in social networks, which is validated in the case of Taocode (an intermediary that diffuses user interest in Taobao). Thus, we propose a novel framework, RiseNet, to incorporate the user interest diffusion process with the item dynamic features to effectively predict rising stars. Specifically, we adopt a coupled mechanism to capture the dynamic interplay between items and user interest, and a special designed GNN based framework to quantify user interest. Our experimental results on large-scale real-world datasets provided by Taobao demonstrate the effectiveness of our proposed framework.

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