Awesome
HetETA: Heterogeneous Information Network Embedding for Estimating Time of Arrival
This is basic implementation of our KDD'20 Applied Data Science Track (Oral) paper:
Huiting Hong, Yucheng Lin, Xiaoqing Yang, Zang Li, Kung Fu, Zheng Wang, Xiaohu Qie, Jieping Ye. 2020. HetETA: Heterogeneous Information Network Embedding for Estimating Time of Arrival.
The source code is based on STGCN
HetETA framework |
---|
Dependencies
The script has been tested running under Python 2.7.5, with the following packages installed (along with their dependencies):
argparse==1.1
numpy==1.16.5
scipy==1.2.2
networkx==2.2
tensorflow-gpu==1.13.1
yaml==5.1.2
Overview
Here we provide the implementation of HetETA and a toy dataset.
The folder is organised as follows:
dataset/
contains:make_sample.py
randomly generates thetoy_sample
dataset to help readers to figure out the input format;toy_sample/
contains:adj_gap_top5.mat
is the vehicle-trajectories based network;adj.mat
is the multi-relational road network;link_info.npz
is the static attributes of each road segment;dynamic_fes.npz
is the dynamic feature (speed) of each road segment over time periods;eta_label.npz
contains the time it takes for a vehicle to travel through a path starting form period t.
codes/
contains:data/
:model/
is used to save the trained model;config_*.yaml
configures the path and paramenter settings.
model/
contains the implementation of the HetETA network;utils/
contains some tools for loading dataset;train.py
is used to execute a full training run on the dataset.
How to run
cd codes
python -u train.py --config data/config_HetETA_toy.yaml --model_dir data/model/HetETA_toy --dataset_dir ../dataset/toy_sample >> multi-HetETA_toy.log
Please note that the toy_sample
dataset is not a real dataset, which is only used to provide examples of data formats, not to train models.
License
Didi Chuxing, Beijing, China.