pith. sign in

hub Baseline reference

Diffusion Convolutional Recurrent Neural Network: Data-Driven Traffic Forecasting

Baseline reference. 50% of citing Pith papers use this work as a benchmark or comparison.

35 Pith papers citing it
Baseline 50% of classified citations
abstract

Spatiotemporal forecasting has various applications in neuroscience, climate and transportation domain. Traffic forecasting is one canonical example of such learning task. The task is challenging due to (1) complex spatial dependency on road networks, (2) non-linear temporal dynamics with changing road conditions and (3) inherent difficulty of long-term forecasting. To address these challenges, we propose to model the traffic flow as a diffusion process on a directed graph and introduce Diffusion Convolutional Recurrent Neural Network (DCRNN), a deep learning framework for traffic forecasting that incorporates both spatial and temporal dependency in the traffic flow. Specifically, DCRNN captures the spatial dependency using bidirectional random walks on the graph, and the temporal dependency using the encoder-decoder architecture with scheduled sampling. We evaluate the framework on two real-world large scale road network traffic datasets and observe consistent improvement of 12% - 15% over state-of-the-art baselines.

hub tools

citation-role summary

background 2 baseline 2 dataset 1 method 1

citation-polarity summary

clear filters

representative citing papers

Estimation--Prediction Tradeoff in Causal Probabilistic Temporal Graphs

cs.LG · 2026-06-26 · unverdicted · novelty 6.0

Characterizes an estimation-prediction tradeoff in binary logistic models for causal probabilistic temporal graphs and proposes a framework to jointly evaluate temporal link prediction with causal parameter recovery via Cramér-Rao bounds.

INDEQS: Informed Neural controlled Differential EQuationS

cs.LG · 2026-06-17 · unverdicted · novelty 6.0

INDEQS is a graph-informed NCDE variant that separates inner hidden-state mixing from outer vector-field mixing and reports lower MAE than uninformed NCDEs on synthetic advection data and real river/traffic tasks when the graph is known.

Uniform Inductive Spatio-Temporal Kriging

cs.AI · 2026-03-05 · unverdicted · novelty 6.0

UniSTOK improves inductive spatio-temporal kriging under incomplete observations by reliability-guided signal regulation and residual bias calibration.

citing papers explorer

Showing 0 of 0 citing papers after filters.

No citing papers match the current filters.