Wenjun CuiQiyu KangXuhao LiKai ZhaoWee Peng TayWeihua DengYidong Li
The use of neural differential equation models in machine learning applications has gained significant traction in recent years. In particular, fractional differential equations (FDEs) have emerged as a powerful tool for capturing complex dynamics in various domains. While existing models have primarily focused on constant-order fractional derivatives, variable-order fractional operators offer a more flexible and expressive framework for modeling complex memory patterns. In this work, we introduce the Neural Variable-Order Fractional Differential Equation network (NvoFDE), a novel neural network framework that integrates variable-order fractional derivatives with learnable neural networks. Our framework allows for the modeling of adaptive derivative orders dependent on hidden features, capturing more complex feature-updating dynamics and providing enhanced flexibility. We conduct extensive experiments across multiple graph datasets to validate the effectiveness of our approach. Our results demonstrate that NvoFDE outperforms traditional constant-order fractional and integer models across a range of tasks, showcasing its superior adaptability and performance.
Wiktor MaleszaDominik SierociukMichał Macias
S. SahooS. Saha RayShantanu DasR. K. Bera
Lan–Lan HuangJu H. ParkGuo–Cheng WuZhiwen Mo
Yuntao JiaMinqiang XuYingzhen Lin
Xiangcheng ZhengZhongqiang ZhangHong Wang