Multi-Frequency Graph Neural Rough Differential Equations for Traffic Forecasting
Zengqiang Wang,
Di Zang
Abstract:The burgeoning field of neural differential equations (NDEs) underscores a quest for models that not only boast interpretability and robustness but also function within a more generalized framework. Although the fusion of Neural Controlled Differential Equations (NCDEs) with Graph Neural Networks (GNNs) has marked significant strides in traffic forecasting, the prolonged integrative process requisite for long-term forecasts remains a detriment to model efficacy. Furthermore, while NCDEs exhibit prowess in extr… Show more
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