손지원/서동혁/송준호’s paper has been accepted in
Title: A Novel Traffic Flow Prediction Model based on a Direct Spatio-Temporal Graph
Author: Jiwon Son, Dong-hyuk Seo, Junho Song, Kyungsik Han, Namhyuk Kim, and Sang-Wook Kim
Abstract
A spatio-temporal model, combining Graph Neural Networks (GNNs)
and Recurrent Neural Networks (RNNs), has shown promising results
in traffic flow prediction. However, existing models do not
sufficiently reflect the spatio-temporal dependencies on a real road
network. The observed traffic flow on a particular segment at a specific
time point can be attributed to the movement of vehicles from
multiple segments at various past time points; therefore, separating
spatial and temporal dependencies does not precisely explain Direct
Spatio-Temporal dependencies (DST-dependencies). In this paper, we
introduce a Direct Spatio-Temporal graph (DST-graph) that models
DST-dependencies and a novel traffic flow prediction model, named
Spatio-TempoRAl dIrect GrapH aTtention network (STRAIGHT),
that predicts traffic flows based on the DST-dependencies. Via extensive
experiments using seven real-world datasets, we demonstrated
the validity of DST-dependencies for traffic flow prediction
and the effectiveness of STRAIGHT which exhibited improvements
in accuracy ranging from 2% to 37% compared to state-of-the-art
competitors.