Deep Interest Network for Click-Through Rate Prediction
This is an implementation of the paper Deep Interest Network for Click-Through Rate Prediction Guorui Zhou, Chengru Song, Xiaoqiang Zhu, Han Zhu, Ying Fan, Na Mou, Xiao Ma, Yanghui Yan, Xingya Dai, Junqi Jin, Han Li, Kun Gai
Thanks to Jinze Bai and Chang Zhou.
Bibtex:
@article{Zhou2017Deep,
title={Deep Interest Network for Click-Through Rate Prediction},
author={Zhou, Guorui and Song, Chengru and Zhu, Xiaoqiang and Ma, Xiao and Yan, Yanghui and Dai, Xingya and Zhu, Han and Jin, Junqi and Li, Han and Gai, Kun},
year={2017},
}
- Python >= 3.6.1
- NumPy >= 1.12.1
- Pandas >= 0.20.1
- TensorFlow >= 1.4.0 (Probably earlier version should work too, though I didn't test it)
- GPU with memory >= 10G
- Step 1: Download the amazon product dataset of electronics category, which has 498,196 products and 7,824,482 records, and extract it to
raw_data/
folder.
mkdir raw_data/;
cd utils;
bash 0_download_raw.sh;
- Step 2: Convert raw data to pandas dataframe, and remap categorical id.
python 1_convert_pd.py;
python 2_remap_id.py
This implementation not only contains the DIN method, but also provides all the competitors' method, including Wide&Deep, PNN, DeepFM. The training procedures of all method is as follows:
- Step 1: Choose a method and enter the folder.
cd din;
Alternatively, you could also run other competitors's methods directly by cd deepFM
cd pnn
cd wide_deep
,
and follow the same instructions below.
- Step 2: Building the dataset adapted to current method.
python build_dataset.py
- Step 3: Start training and evaluating using default arguments in background mode.
python train.py >log.txt 2>&1 &
- Step 4: Check training and evaluating progress.
tail -f log.txt
tensorboard --logdir=save_path
There is also an implementation of Dice in folder 'din', you can try dice following the code annotation in din/model.py
or replacing model.py with model_dice.py