Awesome
Group-Buying Recommendation for Social E-Commerce
This is the official implementation of the paper Group-Buying Recommendation for Social E-Commerce (PDF) accepted by ICDE'2021.
Group-Buying Dataset
Group buying, as an emerging form of purchase in social e-commerce websites, such as Pinduoduo.com , has recently achieved great success. In this new business model, users, initiator, can launch a group and share products to their social networks, and when there are enough friends, participants, join it, the deal is clinched. Group-buying recommendation for social ecommerce, which recommends an item list when users want to launch a group, plays an important role in the group success ratio and sales.
The information about the dataset can be found in BeiBei/readme.txt
.
Code
We separate model definition from the framework librecframework
for easily understanding.
You can find the framework librecframework
in https://github.com/Sweetnow/librecframework.
Both modules mentioned in requirements.txt
and librecframework
should be installed before running the code.
More details about our codes will be added soon.
Usage
- Download both
librecframework
and this repo
git clone git@github.com:Sweetnow/librecframework.git
git clone git@github.com:Sweetnow/group-buying-recommendation.git
- Install
librecframework
(Python >= 3.8)
cd librecframework/
bash install.sh
-
Install dgl
-
Download
negative.zip
from Release, unzip it and copy*.negative.txt
todatasets/BeiBei/
wget https://github.com/Sweetnow/group-buying-recommendation/releases/download/v1.0/negative.zip
unzip negative.zip
cp negative/* ${PATH-TO-GROUP-BUYING-RECOMMENDATION}/datasets/BeiBei
PS: negative sampling file is used for testing. More details can be found in Datasets README
-
Set
config/config.json
andconfig/pretrain.json
following Docs. -
Run the following command to know the CLI and check python environment:
python3 GBGCN train -h
# or
# python3 GBGCN test -h
PS: If you set hyperparameters that support multi input to multi values, the framework will automatically do grid-search accroding to your input. That is, use the Cartesian product of the hyperparameters for training and testing. For example, set --lr 0.1 0.01 -L 1 2
, the codes will train and test model with hyperparameters [(0.1, 1), (0.1, 2), (0.01, 1), (0.01, 2)].
Citation
If you want to use our codes or dataset in your research, please cite:
@inproceedings{zhang2021group,
title={Group-Buying Recommendation for Social E-Commerce},
author={Zhang, Jun and Gao, Chen and Jin, Depeng and Li, Yong},
booktitle={2021 IEEE 37th International Conference on Data Engineering (ICDE)},
year={2021},
organization={IEEE}
}