Jointly Learning Explainable Rules for Recommendation with Knowledge Graph

Overview

RuleRec

These are our datasets and implementation for the paper:

Weizhi Ma, Min Zhang, Yue Cao, Woojeong Jin, Chenyang Wang, Yiqun Liu, Shaoping Ma, and Xiang Ren. 2019. Jointly Learning Explainable Rules for Recommendation with Knowledge Graph. In TheWebConf'19.

Please cite our paper if you use our datasets or codes. Thanks!

@inproceedings{ma2019jointly,
  title={Jointly Learning Explainable Rules for Recommendation with Knowledge Graph},
  author={Ma, Weizhi and Zhang, Min and Cao, Yue and Jin, Woojeong and Wang, Chenyang and Liu, Yiqun and Ma, Shaoping and Ren, Xiang},
  booktitle={The World Wide Web Conference},
  pages={1210--1221},
  year={2019},
  organization={ACM}
}

If you have any problem about this work, you can contact Weizhi Ma (mawz12 AT hotmail.com).

RuleRec Datasets

The constructed datasets (two scenarios: Amazon cellphone and Amazon electronic) can be found here, which contain several parts:

Recommendation Data:

train.txt, test.txt: user-item interaction data.

Formatting: 
	user id \t item id

item_dic.txt: A python dic, key = item id in Amazon, value = item id here.

Item Attributes:

title.txt, brand.txt, description.txt: item attributes.

Formatting: 
	item id in Amazon \t the title/brand/description of this item

Item Associations:

also_buy.txt, also_view.txt, buy_after_view.txt, buy_together.txt: item associations.

Formatting:
	item id in Amazon \t items that have also\_buy/also\_view/buy\_after\_view/buy\_together association with this item, split by ' '

Entity Linking Data:

title_entities.txt, brand_entities.txt, description_entities.txt: entity linking results on freebase.

Formatting:
	item id in Amazon \t entity name \t entity id in Freebase

Path data:

KGData/*/rule_score.txt: As Freebase is an extremely large knowledge graph, only the related paths in the knowledge graph are recorded in this file. The head and tail entity of each path linked by at least one item.

training_pairs.txt and usercandidates.txt are two files sampled for rule learning and recommendation. You can replace them with other sampling results. The formatting of training_pairs.txt is 'user id : [positive item id, negative item id]'.



Besides, the original Amazon datasets (including user-item interaction history and item associations) are provided by Professor Mcauley. You can download them here.

Rule Learning Codes

If you want to use these codes, you should download RuleRec dataset and put them together first.

getItemItemDic.py: Enumerate all possible rules.

selectRules.py: Rule selection (rule features for jointly learning will also be generated in this step).

getFeatures.py: Calculate features based on the selected rules for item recommendation.

Environments: Python 3.6.3

sklearn = 0.19.1

numpy = 1.13.3

# Example:
> python getItemItemDic.py Cellphone abu
> python selectRules.py Cellphone abu 50
> python getFeatures.py Cellphone abu 50

RuleRec(BPRMF) Codes:

This implementation is based on MyMediaLiteJava. Both codes and jar file are provided.

The evaluation datasets can be downloaded from here, which is generated from RuleRec Data and contains both rule selection features and rule features.

Environments: Java, version 1.6 or later

# Example 1: Use Cellphone dataset
> java -jar BPRMF.jar --recommender=BPRMF --training-file=./RuleRecInput/Cellphone/trainingSet.txt --test-file=./RuleRecInput/Cellphone/testSet.txt --candidateFile=./RuleRecInput/Cellphone/candidates.txt --trainingPairFile=./RuleRecInput/Cellphone/trainingPairs.txt --trainingFeatures=./RuleRecInput/Cellphone/trainingFeatures.txt --testFeatures=./RuleRecInput/Cellphone/testFeatures.txt --learningRate=0.1 --usermodel=0 --iter-times=30 --rule-weight=0.005  --ruleWeightNumber=200 --resultFile=result.txt 
# output:[email protected]=0.34968 [email protected]=0.48024 [email protected]=0.28287 [email protected] num_users=27840 num_items=100 num_lists=27840

# Example 2: Use Cellphone dataset with jointly learning
> java -jar BPRMF.jar --recommender=BPRMF --training-file=./RuleRecInput/Cellphone/trainingSet.txt --test-./RuleRecInput/Cellphone/testSet.txt --candidateFile=./RuleRecInput/Cellphone/candidates.txt --trainingPairFile=./RuleRecInput/Cellphone/trainingPairs.txt --trainingFeatures=./RuleRecInput/Cellphone/trainingFeatures.txt --testFeatures=./RuleRecInput/Cellphone/testFeatures.txt --learningRate=0.1 --usermodel=0 --iter-times=30 --rule-weight=0.005  --ruleWeightNumber=200 --resultFile=result.txt --trainTogether=2  --lossType=sigmoid --lossCombineRate=0.2 --ruleselectTrain=./RuleRecInput/Cellphone/ruleselect/ --ruleselectResult=./RuleRecInput/Cellphone/ruleselect/ 
# output:[email protected]=0.36430 [email protected]=0.49429 [email protected]=0.29536 [email protected]=0.23214 num_users=27840 num_items=100 num_lists=27840

# Example 3: Use Electronic dataset
> java -jar BPRMF.jar --recommender=BPRMF --training-file=./RuleRecInput/Electronic/trainingSet.txt --test-file=./RuleRecInput/Electronic/testSet.txt --candidateFile=./RuleRecInput/Electronic/candidates.txt --trainingPairFile=./RuleRecInput/Electronic/trainingPairs.txt --trainingFeatures=./RuleRecInput/Electronic/trainingFeatures.txt --testFeatures=./RuleRecInput/Electronic/testFeatures.txt --learningRate=0.05 --ruleWeightNumber=200 --usermodel=0 --iter-times=30 --rule-weight=0.01 --resultFile=result.txt 
# output:[email protected]=0.20694 [email protected]=0.29726 [email protected]=0.17284 [email protected]=0.13483 num_users=18223 num_items=100 num_lists=18223

# Example 4: Use Electronic dataset with jointly learning
> java -jar BPRMF.jar --recommender=BPRMF --training-file=./RuleRecInput/Electronic/trainingSet.txt --test-file=./RuleRecInput/Electronic/testSet.txt --candidateFile=./RuleRecInput/Electronic/candidates.txt --trainingPairFile=./RuleRecInput/Electronic/trainingPairs.txt --trainingFeatures=./RuleRecInput/Electronic/trainingFeatures.txt --testFeatures=./RuleRecInput/Electronic/testFeatures.txt --learningRate=0.05 --ruleWeightNumber=200 --usermodel=0 --iter-times=30 --rule-weight=0.01 --resultFile=result.txt --trainTogether=2  --lossType=sigmoid --lossCombineRate=0.005 --ruleselectTrain=./RuleRecInput/Electronic/ruleselect/ --ruleselectResult=./RuleRecInput/Electronic/ruleselect/ 
# output:[email protected]=0.20798 [email protected]=0.29979 [email protected]=0.17407 [email protected]=0.13570 num_users=18223 num_items=100 num_lists=18223
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
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
RecList is an open source library providing behavioral, "black-box" testing for recommender systems.

RecList is an open source library providing behavioral, "black-box" testing for recommender systems.

Jacopo Tagliabue 375 Dec 30, 2022
Cloud-based recommendation system

This project is based on cloud services to create data lake, ETL process, train and deploy learning model to implement a recommendation system.

Yi Ding 1 Feb 02, 2022
E-Commerce recommender demo with real-time data and a graph database

🔍 E-Commerce recommender demo 🔍 This is a simple stream setup that uses Memgraph to ingest real-time data from a simulated online store. Data is str

g-despot 3 Feb 23, 2022
NVIDIA Merlin is an open source library designed to accelerate recommender systems on NVIDIA’s GPUs.

NVIDIA Merlin is an open source library providing end-to-end GPU-accelerated recommender systems, from feature engineering and preprocessing to training deep learning models and running inference in

420 Jan 04, 2023
Plex-recommender - Get movie recommendations based on your current PleX library

plex-recommender Description: Get movie/tv recommendations based on your current

5 Jul 19, 2022
QRec: A Python Framework for quick implementation of recommender systems (TensorFlow Based)

QRec is a Python framework for recommender systems (Supported by Python 3.7.4 and Tensorflow 1.14+) in which a number of influential and newly state-of-the-art recommendation models are implemented.

Yu 1.4k Dec 27, 2022
Use Jupyter Notebooks to demonstrate how to build a Recommender with Apache Spark & Elasticsearch

Recommendation engines are one of the most well known, widely used and highest value use cases for applying machine learning. Despite this, while there are many resources available for the basics of

International Business Machines 793 Dec 18, 2022
Code for ICML2019 Paper "Compositional Invariance Constraints for Graph Embeddings"

Dependencies NOTE: This code has been updated, if you were using this repo earlier and experienced issues that was due to an outaded codebase. Please

Avishek (Joey) Bose 43 Nov 25, 2022
Graph Neural Network based Social Recommendation Model. SIGIR2019.

Basic Information: This code is released for the papers: Le Wu, Peijie Sun, Yanjie Fu, Richang Hong, Xiting Wang and Meng Wang. A Neural Influence Dif

PeijieSun 144 Dec 29, 2022
A Library for Field-aware Factorization Machines

Table of Contents ================= - What is LIBFFM - Overfitting and Early Stopping - Installation - Data Format - Command Line Usage - Examples -

1.6k Dec 05, 2022
Accuracy-Diversity Trade-off in Recommender Systems via Graph Convolutions

Accuracy-Diversity Trade-off in Recommender Systems via Graph Convolutions This repository contains the code of the paper "Accuracy-Diversity Trade-of

2 Sep 16, 2022
A Python scikit for building and analyzing recommender systems

Overview Surprise is a Python scikit for building and analyzing recommender systems that deal with explicit rating data. Surprise was designed with th

Nicolas Hug 5.7k Jan 01, 2023
Handling Information Loss of Graph Neural Networks for Session-based Recommendation

LESSR A PyTorch implementation of LESSR (Lossless Edge-order preserving aggregation and Shortcut graph attention for Session-based Recommendation) fro

Tianwen CHEN 62 Dec 03, 2022
An open source movie recommendation WebApp build by movie buffs and mathematicians that uses cosine similarity on the backend.

Movie Pundit Find your next flick by asking the (almost) all-knowing Movie Pundit Jump to Project Source » View Demo · Report Bug · Request Feature Ta

Kapil Pramod Deshmukh 8 May 28, 2022
Code for my ORSUM, ACM RecSys 2020, HeroGRAPH: A Heterogeneous Graph Framework for Multi-Target Cross-Domain Recommendation

HeroGRAPH Code for my ORSUM @ RecSys 2020, HeroGRAPH: A Heterogeneous Graph Framework for Multi-Target Cross-Domain Recommendation Paper, workshop pro

Qiang Cui 9 Sep 14, 2022
Pytorch domain library for recommendation systems

TorchRec (Experimental Release) TorchRec is a PyTorch domain library built to provide common sparsity & parallelism primitives needed for large-scale

Meta Research 1.3k Jan 05, 2023
Hierarchical Fashion Graph Network for Personalized Outfit Recommendation, SIGIR 2020

hierarchical_fashion_graph_network This is our Tensorflow implementation for the paper: Xingchen Li, Xiang Wang, Xiangnan He, Long Chen, Jun Xiao, and

LI Xingchen 70 Dec 05, 2022
Codes for CIKM'21 paper 'Self-Supervised Graph Co-Training for Session-based Recommendation'.

COTREC Codes for CIKM'21 paper 'Self-Supervised Graph Co-Training for Session-based Recommendation'. Requirements: Python 3.7, Pytorch 1.6.0 Best Hype

Xin Xia 43 Jan 04, 2023