An ability to predict the popularity dynamics of individual items within a complex evolving system has important implications in a wide range of domains. Here we propose a deep learning attention mechanism to model the process through which individual items gain their popularity. We analyze the interpretability of the model with the four key phenomena confirmed independently in the previous studies of long-term popularity dynamics quantification, including the intrinsic quality, the aging effect, the recency effect and the Matthew effect. We analyze the effectiveness of introducing attention model in popularity dynamics prediction. Extensive experiments on a real-large citation data set demonstrate that the designed deep learning attention mechanism possesses remarkable power at predicting the long-term popularity dynamics. It consistently outperforms the existing methods, and achieves a significant performance improvement.
翻译:在一个复杂演变的系统中预测个别物品的受欢迎性动态的能力对广泛的领域具有重要影响。在这里,我们提出一个深层的学习关注机制,以模拟个别物品获得受欢迎性的过程。我们分析了模型与四个主要现象的解释性,这四个关键现象在以往长期受欢迎性动态量化研究中独立证实,包括内在质量、老化效应、耐久效应和马修效应。我们分析了在受欢迎性动态预测中引入关注性模型的有效性。对一套真正的大量引用数据集进行的广泛实验表明,所设计的深层学习关注机制在预测长期受欢迎性动态方面拥有显著的力量。它始终超越了现有方法,并取得了显著的绩效改进。