Traffic Forecasting on New Roads Using Spatial Contrastive Pre-Training (SCPT)
Arian Prabowo, Hao Xue, Wei Shao, Piotr Koniusz, Flora D. Salim

TL;DR
This paper introduces a novel spatial contrastive pre-training framework (SCPT) that enhances traffic forecasting on unseen roads by leveraging limited data and a specialized spatial encoder, significantly improving long-term prediction accuracy.
Contribution
The paper proposes a new SCPT framework with a spatial encoder pre-trained via contrastive learning, enabling effective traffic forecasting on unseen roads without re-training.
Findings
SCPT improves forecasting accuracy on unseen roads.
Performance gains are larger for longer-term predictions.
The framework requires only two days of data for new roads.
Abstract
New roads are being constructed all the time. However, the capabilities of previous deep forecasting models to generalize to new roads not seen in the training data (unseen roads) are rarely explored. In this paper, we introduce a novel setup called a spatio-temporal (ST) split to evaluate the models' capabilities to generalize to unseen roads. In this setup, the models are trained on data from a sample of roads, but tested on roads not seen in the training data. Moreover, we also present a novel framework called Spatial Contrastive Pre-Training (SCPT) where we introduce a spatial encoder module to extract latent features from unseen roads during inference time. This spatial encoder is pre-trained using contrastive learning. During inference, the spatial encoder only requires two days of traffic data on the new roads and does not require any re-training. We also show that the output…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Transportation Planning and Optimization · Traffic and Road Safety
MethodsGraph Neural Network · Mixture of Logistic Distributions · Dilated Causal Convolution · WaveNet · Convolution · Contrastive Learning
