This is an open-source (MIT) Pytorch based code repository (feature embedding) for the following paper:
"Wang, B., Shaaban, K. and Kim, I., 2019. Revealing the hidden features in traffic prediction via entity embedding. Personal and Ubiquitous Computing, pp.1-11."
The feature embedding is designed to represent discreate (or categorical) variables in traffic forecasting tasks. More information can be found at http://resuly.me/2020/02/18/embedding-in-transport/
The main code located in the model
folder and the visualization works can be found in visualization
.
To run the embedding model, you will need to install PyTorch environment and run the following command:
python train.py --model EM
See the results in experiments/EM
If you think this is helpful to your research, please consider citing our work:
@article{wang2019revealing,
title={Revealing the hidden features in traffic prediction via entity embedding},
author={Wang, Bo and Shaaban, Khaled and Kim, Inhi},
journal={Personal and Ubiquitous Computing},
pages={1--11},
year={2019},
publisher={Springer}
}