Bundle Graph Convolutional Network

Overview

Bundle Graph Convolutional Network

This is our Pytorch implementation for the paper:

Jianxin Chang, Chen Gao, Xiangnan He, Depeng Jin and Yong Li. Bundle Graph Convolutional Network, Paper in ACM DL or Paper in arXiv. In SIGIR'20, Xi'an, China, July 25-30, 2020.

Author: Jianxin Chang ([email protected])

Introduction

Bundle Graph Convolutional Network (BGCN) is a bundle recommendation solution based on graph neural network, explicitly re-constructing the two kinds of interaction and an affiliation into the graph. With item nodes as the bridge, graph convolutional propagation between user and bundle nodes makes the learned representations capture the item level semantics.

Citation

If you want to use our codes and datasets in your research, please cite:

@inproceedings{BGCN20,
  author    = {Jianxin Chang and 
               Chen Gao and 
               Xiangnan He and 
               Depeng Jin and 
               Yong Li},
  title     = {Bundle Recommendation with Graph Convolutional Networks},
  booktitle = {Proceedings of the 43nd International {ACM} {SIGIR} Conference on
               Research and Development in Information Retrieval, {SIGIR} 2020, Xi'an,
               China, July 25-30, 2020.},
  year      = {2020},
}

Requirement

The code has been tested running under Python 3.7.0. The required packages are as follows:

  • torch == 1.2.0
  • numpy == 1.17.4
  • scipy == 1.4.1
  • temsorboardX == 2.0

Usage

The hyperparameter search range and optimal settings have been clearly stated in the codes (see the 'CONFIG' dict in config.py).

  • Train
python main.py 
  • Futher Train

Replace 'sample' from 'simple' to 'hard' in CONFIG and add model file path obtained by Train to 'conti_train', then run

python main.py 
  • Test

Add model path obtained by Futher Train to 'test' in CONFIG, then run

python eval_main.py 

Some important hyperparameters:

  • lrs

    • It indicates the learning rates.
    • The learning rate is searched in {1e-5, 3e-5, 1e-4, 3e-4, 1e-3, 3e-3}.
  • mess_dropouts

    • It indicates the message dropout ratio, which randomly drops out the outgoing messages.
    • We search the message dropout within {0, 0.1, 0.3, 0.5}.
  • node_dropouts

    • It indicates the node dropout ratio, which randomly blocks a particular node and discard all its outgoing messages.
    • We search the node dropout within {0, 0.1, 0.3, 0.5}.
  • decays

    • we adopt L2 regularization and use the decays to control the penalty strength.
    • L2 regularization term is tuned in {1e-7, 1e-6, 1e-5, 1e-4, 1e-3, 1e-2}.
  • hard_window

    • It indicates the difficulty of sampling in the hard-negative sampler.
    • We set it to the top thirty percent.
  • hard_prob

    • It indicates the probability of using hard-negative samples in the further training stage.
    • We set it to 0.8 (0.4 in the item level and 0.4 in the bundle level), so the probability of simple samples is 0.2.

Dataset

We provide one processed dataset: Netease.

  • user_bundle_train.txt

    • Train file.
    • Each line is 'userID\t bundleID\n'.
    • Every observed interaction means user u once interacted bundle b.
  • user_item.txt

    • Train file.
    • Each line is 'userID\t itemID\n'.
    • Every observed interaction means user u once interacted item i.
  • bundle_item.txt

    • Train file.
    • Each line is 'bundleID\t itemID\n'.
    • Every entry means bundle b contains item i.
  • Netease_data_size.txt

    • Assist file.
    • The only line is 'userNum\t bundleNum\t itemNum\n'.
    • The triplet denotes the number of users, bundles and items, respectively.
  • user_bundle_tune.txt

    • Tune file.
    • Each line is 'userID\t bundleID\n'.
    • Every observed interaction means user u once interacted bundle b.
  • user_bundle_test.txt

    • Test file.
    • Each line is 'userID\t bundleID\n'.
    • Every observed interaction means user u once interacted bundle b.
Owner
M.S. student from E.E., Tsinghua University.
It is a movie recommender web application which is developed using the Python.

Movie Recommendation 🍿 System Watch Tutorial for this project Source IMDB Movie 5000 Dataset Inspired from this original repository. Features Simple

Kushal Bhavsar 10 Dec 26, 2022
Bundle Graph Convolutional Network

Bundle Graph Convolutional Network This is our Pytorch implementation for the paper: Jianxin Chang, Chen Gao, Xiangnan He, Depeng Jin and Yong Li. Bun

55 Dec 25, 2022
Movie Recommender System

Movie-Recommender-System Movie-Recommender-System is a web application using which a user can select his/her watched movie from list and system will r

1 Jul 14, 2022
Approximate Nearest Neighbors in C++/Python optimized for memory usage and loading/saving to disk

Annoy Annoy (Approximate Nearest Neighbors Oh Yeah) is a C++ library with Python bindings to search for points in space that are close to a given quer

Spotify 10.6k Jan 01, 2023
Real time recommendation playground

concierge A continuous learning collaborative filter1 deployed with a light web server2. Distributed updates are live (real time pubsub + delta traini

Mark Essel 16 Nov 07, 2022
Movies/TV Recommender

recommender Movies/TV Recommender. Recommends Movies, TV Shows, Actors, Directors, Writers. Setup Create file API_KEY and paste your TMDB API key in i

Aviem Zur 3 Apr 22, 2022
A PyTorch implementation of "Say No to the Discrimination: Learning Fair Graph Neural Networks with Limited Sensitive Attribute Information" (WSDM 2021)

FairGNN A PyTorch implementation of "Say No to the Discrimination: Learning Fair Graph Neural Networks with Limited Sensitive Attribute Information" (

31 Jan 04, 2023
Books Recommendation With Python

Books-Recommendation Business Problem During the last few decades, with the rise

Çağrı Karadeniz 7 Mar 12, 2022
大规模推荐算法库,包含推荐系统经典及最新算法LR、Wide&Deep、DSSM、TDM、MIND、Word2Vec、DeepWalk、SSR、GRU4Rec、Youtube_dnn、NCF、GNN、FM、FFM、DeepFM、DCN、DIN、DIEN、DLRM、MMOE、PLE、ESMM、MAML、xDeepFM、DeepFEFM、NFM、AFM、RALM、Deep Crossing、PNN、BST、AutoInt、FGCNN、FLEN、ListWise等

(中文文档|简体中文|English) 什么是推荐系统? 推荐系统是在互联网信息爆炸式增长的时代背景下,帮助用户高效获得感兴趣信息的关键; 推荐系统也是帮助产品最大限度吸引用户、留存用户、增加用户粘性、提高用户转化率的银弹。 有无数优秀的产品依靠用户可感知的推荐系统建立了良好的口碑,也有无数的公司依

3.6k Dec 30, 2022
RecSim NG: Toward Principled Uncertainty Modeling for Recommender Ecosystems

RecSim NG, a probabilistic platform for multi-agent recommender systems simulation. RecSimNG is a scalable, modular, differentiable simulator implemented in Edward2 and TensorFlow. It offers: a power

Google Research 110 Dec 16, 2022
Elliot is a comprehensive recommendation framework that analyzes the recommendation problem from the researcher's perspective.

Comprehensive and Rigorous Framework for Reproducible Recommender Systems Evaluation

Information Systems Lab @ Polytechnic University of Bari 215 Nov 29, 2022
Jointly Learning Explainable Rules for Recommendation with Knowledge Graph

Jointly Learning Explainable Rules for Recommendation with Knowledge Graph

57 Nov 03, 2022
Detecting Beneficial Feature Interactions for Recommender Systems, AAAI 2021

Detecting Beneficial Feature Interactions for Recommender Systems (L0-SIGN) This is our implementation for the paper: Su, Y., Zhang, R., Erfani, S., &

26 Nov 22, 2022
Mutual Fund Recommender System. Tailor for fund transactions.

Explainable Mutual Fund Recommendation Data Please see 'DATA_DESCRIPTION.md' for mode detail. Recommender System Methods Baseline Collabarative Fiilte

JHJu 2 May 19, 2022
Attentive Social Recommendation: Towards User And Item Diversities

ASR This is a Tensorflow implementation of the paper: Attentive Social Recommendation: Towards User And Item Diversities Preprint, https://arxiv.org/a

Dongsheng Luo 1 Nov 14, 2021
A Python implementation of LightFM, a hybrid recommendation algorithm.

LightFM Build status Linux OSX (OpenMP disabled) Windows (OpenMP disabled) LightFM is a Python implementation of a number of popular recommendation al

Lyst 4.2k Jan 02, 2023
Implementation of a hadoop based movie recommendation system

Implementation-of-a-hadoop-based-movie-recommendation-system 通过编写代码,设计一个基于Hadoop的电影推荐系统,通过此推荐系统的编写,掌握在Hadoop平台上的文件操作,数据处理的技能。windows 10 hadoop 2.8.3 p

汝聪(Ricardo) 5 Oct 02, 2022
Global Context Enhanced Social Recommendation with Hierarchical Graph Neural Networks

SR-HGNN ICDM-2020 《Global Context Enhanced Social Recommendation with Hierarchical Graph Neural Networks》 Environments python 3.8 pytorch-1.6 DGL 0.5.

xhc 9 Nov 12, 2022
Price-aware Recommendation with Graph Convolutional Networks,

PUP This is the official implementation of our ICDE'20 paper: Yu Zheng, Chen Gao, Xiangnan He, Yong Li, Depeng Jin, Price-aware Recommendation with Gr

S4rawBer2y 3 Oct 30, 2022
Respiratory Health Recommendation System

Respiratory-Health-Recommendation-System Respiratory Health Recommendation System based on Air Quality Index Forecasts This project aims to provide pr

Abhishek Gawabde 1 Jan 29, 2022