Awesome
Graph Convolutional Networks with Kalman Filtering for Traffic Prediction
This is a PyTorch implementation of Deep Kalman Filtering Network(DKFN) in the following poster paper:
Fanglan Chen, Zhiqian Chen, Subhodip Biswas, Shuo Lei, Naren Ramakrishnan, and Chang-Tien Lu, Graph Convolutional Networks with Kalman Filtering for Traffic Prediction, SIGSPATIAL 2020.
Requirements
- torch==1.0.1
- numpy>=1.16.5
- pandas>=0.25.1
- argparse
- time
- math
Datasets
The DKFN model is tested on two real-world traffic speed datasets, METR-LA data and Seattle-Loop data. The METR-LA data is shared in the METR_LA_Dataset folder. The Seattle-Loop data is acquired from this repository. You can go to the original link to download the 2015 year-round data or assess a 3-month (Jun-Aug) via Google Drive.
To run the code, you need to download the traffic speed data and graph adjacency matrix and put them in the corresponding "_Dataset" folder.
Model Training/Testing
To train and test DKFN with specific parameters, you can optionally change the main.py file and here are commands for training/testing the DKFN model on METR-LA
and Seattle-Loop
respectively.
# METR-LA
python main.py -dataset=metr-la -model=dkfn
# Seattle-Loop
python main.py -dataset=seattle-loop -model=dkfn
For baselines including RNN, LSTM, and GCLSTM, you can change the model name to rnn
, lstm
, or gclstm
, respectively.
Citation
If you find this repository useful in your own research, please cite the following poster paper:
@inproceedings{chen2020graph,
title={Graph Convolutional Networks with Kalman Filtering for Traffic Prediction},
author={Chen, Fanglan and Chen, Zhiqian and Biswas, Subhodip and Lei, Shuo and Ramakrishnan, Naren and Lu, Chang-Tien},
booktitle={Proceedings of the 28th International Conference on Advances in Geographic Information Systems},
pages={135--138},
year={2020}
}