Traffic speed prediction is the key to many valuable applications, and it is
also a challenging task because of its various influencing factors. Recent work
attempts to obtain more information through various hybrid models, thereby
improving the prediction accuracy. However, the spatial information acquisition
schemes of these methods have two-level differentiation problems. Either the
modeling is simple but contains little spatial information, or the modeling is
complete but lacks flexibility. In order to introduce more spatial information
on the basis of ensuring flexibility, this paper proposes IRNet (Transferable
Intersection Reconstruction Network). First, this paper reconstructs the
intersection into a virtual intersection with the same structure, which
simplifies the topology of the road network. Then, the spatial information is
subdivided into intersection information and sequence information of traffic
flow direction, and spatiotemporal features are obtained through various
models. Third, a self-attention mechanism is used to fuse spatiotemporal
features for prediction. In the comparison experiment with the baseline, not
only the prediction effect, but also the transfer performance has obvious
advantages.Comment: 14 pages, 12 figure