Personalized Transfer of User Preferences for Cross-domain Recommendation (PTUPCDR)

Overview

Personalized Transfer of User Preferences for Cross-domain Recommendation (PTUPCDR)

This is the official implementation of our paper Personalized Transfer of User Preferences for Cross-domain Recommendation (PTUPCDR), which has been accepted by WSDM2022.

Cold-start problem is still a very challenging problem in recommender systems. Fortunately, the interactions of the cold-start users in the auxiliary source domain can help cold-start recommendations in the target domain. How to transfer user's preferences from the source domain to the target domain, is the key issue in Cross-domain Recommendation (CDR) which is a promising solution to deal with the cold-start problem. Most existing methods model a common preference bridge to transfer preferences for all users. Intuitively, since preferences vary from user to user, the preference bridges of different users should be different. Along this line, we propose a novel framework named Personalized Transfer of User Preferences for Cross-domain Recommendation (PTUPCDR). Specifically, a meta network fed with users' characteristic embeddings is learned to generate personalized bridge functions to achieve personalized transfer of preferences for each user. To learn the meta network stably, we employ a task-oriented optimization procedure. With the meta-generated personalized bridge function, the user's preference embedding in the source domain can be transformed into the target domain, and the transformed user preference embedding can be utilized as the initial embedding for the cold-start user in the target domain. Using large real-world datasets, we conduct extensive experiments to evaluate the effectiveness of PTUPCDR on both cold-start and warm-start stages.

Requirements

  • Python 3.6
  • Pytorch > 1.0
  • tensorflow
  • Pandas
  • Numpy
  • Tqdm

File Structure

.
├── code
│   ├── config.json         # Configurations
│   ├── entry.py            # Entry function
│   ├── models.py           # Models based on MF, GMF or Youtube DNN
│   ├── preprocessing.py    # Parsing and Segmentation
│   ├── readme.md
│   └── run.py              # Training and Evaluating 
└── data
    ├── mid                 # Mid data
    │   ├── Books.csv
    │   ├── CDs_and_Vinyl.csv
    │   └── Movies_and_TV.csv
    ├── raw                 # Raw data
    │   ├── reviews_Books_5.json.gz
    │   ├── reviews_CDs_and_Vinyl_5.json.gz
    │   └── reviews_Movies_and_TV_5.json.gz
    └── ready               # Ready to use
        ├── _2_8
        ├── _5_5
        └── _8_2

Dataset

We utilized the Amazon Reviews 5-score dataset. To download the Amazon dataset, you can use the following link: Amazon Reviews or Google Drive. Download the three domains: Music, Movies, Books (5-scores), and then put the data in ./data/raw.

You can use the following command to preprocess the dataset. The two-phase data preprocessing includes parsing the raw data and segmenting the mid data. The final data will be under ./data/ready.

python entry.py --process_data_mid 1 --process_data_ready 1

Run

Parameter Configuration:

  • task: different tasks within 1, 2 or 3, default for 1
  • base_model: different base models within MF, GMF or DNN, default for MF
  • ratio: train/test ratio within [0.8, 0.2], [0.5, 0.5] or [0.2, 0.8], default for [0.8, 0.2]
  • epoch: pre-training and CDR mapping training epoches, default for 10
  • seed: random seed, default for 2020
  • gpu: the index of gpu you will use, default for 0
  • lr: learning_rate, default for 0.01
  • model_name: base model for embedding, default for MF

You can run this model through:

# Run directly with default parameters 
python entry.py

# Reset training epoch to `10`
python entry.py --epoch 20

# Reset several parameters
python entry.py --gpu 1 --lr 0.02

# Reset seed (we use seed in[900, 1000, 10, 2020, 500])
python entry.py --seed 900

If you wanna try different weight decay, meta net dimension, embedding dimmension or more tasks, you may change the settings in ./code/config.json. Note that this repository consists of our PTUPCDR and three baselines, TGTOnly, CMF, and EMCDR.

Reference

Zhu Y, Tang Z, Liu Y, et al. Personalized Transfer of User Preferences for Cross-domain Recommendation[C]. The 15th ACM International Conference on Web Search and Data Mining, 2022.

or in bibtex style:

@inproceedings{zhu2022ptupcdr,
  title={Personalized Transfer of User Preferences for Cross-domain Recommendation},
  author={Zhu, Yongchun and Tang, Zhenwei and Liu, Yudan and Zhuang, Fuzhen, and Xie, Ruobing and Zhang, Xu and Lin, Leyu and He, Qing},
  inproceedings={The 15th ACM International Conference on Web Search and Data Mining},
  year={2022}
}
Owner
Yongchun Zhu
ICT Yongchun Zhu
Yongchun Zhu
Training DALL-E with volunteers from all over the Internet using hivemind and dalle-pytorch (NeurIPS 2021 demo)

Training DALL-E with volunteers from all over the Internet This repository is a part of the NeurIPS 2021 demonstration "Training Transformers Together

<a href=[email protected]"> 19 Dec 13, 2022
PAthological QUpath Obsession - QuPath and Python conversations

PAQUO: PAthological QUpath Obsession Welcome to paquo 👋 , a library for interacting with QuPath from Python. paquo's goal is to provide a pythonic in

Bayer AG 60 Dec 31, 2022
Deep motion transfer

animation-with-keypoint-mask Paper The right most square is the final result. Softmax mask (circles): \ Heatmap mask: \ conda env create -f environmen

9 Nov 01, 2022
A framework for joint super-resolution and image synthesis, without requiring real training data

SynthSR This repository contains code to train a Convolutional Neural Network (CNN) for Super-resolution (SR), or joint SR and data synthesis. The met

83 Jan 01, 2023
Hypersearch weight debugging and losses tutorial

tutorial Activate tensorboard option Running TensorBoard remotely When working on a remote server, you can use SSH tunneling to forward the port of th

1 Dec 11, 2021
Unofficial PyTorch implementation of Masked Autoencoders Are Scalable Vision Learners

Unofficial PyTorch implementation of Masked Autoencoders Are Scalable Vision Learners This repository is built upon BEiT, thanks very much! Now, we on

Zhiliang Peng 2.3k Jan 04, 2023
The MLOps platform for innovators 🚀

​ DS2.ai is an integrated AI operation solution that supports all stages from custom AI development to deployment. It is an AI-specialized platform service that collects data, builds a training datas

9 Jan 03, 2023
Pure python PEMDAS expression solver without using built-in eval function

pypemdas Pure python PEMDAS expression solver without using built-in eval function. Supports nested parenthesis. Supported operators: + - * / ^ Exampl

1 Dec 22, 2021
Detection of PCBA defect

Detection_of_PCBA_defect Detection_of_PCBA_defect Use yolov5 to train. $pip install -r requirements.txt Detect.py will detect file(jpg,mp4...) in cu

6 Nov 28, 2022
Local Attention - Flax module for Jax

Local Attention - Flax Autoregressive Local Attention - Flax module for Jax Install $ pip install local-attention-flax Usage from jax import random fr

Phil Wang 16 Jun 16, 2022
Incorporating Transformer and LSTM to Kalman Filter with EM algorithm

Deep learning based state estimation: incorporating Transformer and LSTM to Kalman Filter with EM algorithm Overview Kalman Filter requires the true p

zshicode 57 Dec 27, 2022
Fuzzing the Kernel Using Unicornafl and AFL++

Unicorefuzz Fuzzing the Kernel using UnicornAFL and AFL++. For details, skim through the WOOT paper or watch this talk at CCCamp19. Is it any good? ye

Security in Telecommunications 283 Dec 26, 2022
DeepProbLog is an extension of ProbLog that integrates Probabilistic Logic Programming with deep learning by introducing the neural predicate.

DeepProbLog DeepProbLog is an extension of ProbLog that integrates Probabilistic Logic Programming with deep learning by introducing the neural predic

KU Leuven Machine Learning Research Group 94 Dec 18, 2022
Image Classification - A research on image classification and auto insurance claim prediction, a systematic experiments on modeling techniques and approaches

A research on image classification and auto insurance claim prediction, a systematic experiments on modeling techniques and approaches

0 Jan 23, 2022
Reinforcement Learning for finance

Reinforcement Learning for Finance We apply reinforcement learning for stock trading. Fetch Data Example import utils # fetch symbols from yahoo fina

Tomoaki Fujii 159 Jan 03, 2023
Differentiable molecular simulation of proteins with a coarse-grained potential

Differentiable molecular simulation of proteins with a coarse-grained potential This repository contains the learned potential, simulation scripts and

UCL Bioinformatics Group 44 Dec 10, 2022
Introduction to Statistics and Basics of Mathematics for Data Science - The Hacker's Way

HackerMath for Machine Learning “Study hard what interests you the most in the most undisciplined, irreverent and original manner possible.” ― Richard

Amit Kapoor 1.4k Dec 22, 2022
BRepNet: A topological message passing system for solid models

BRepNet: A topological message passing system for solid models This repository contains the an implementation of BRepNet: A topological message passin

Autodesk AI Lab 42 Dec 30, 2022
Official implementation of the network presented in the paper "M4Depth: A motion-based approach for monocular depth estimation on video sequences"

M4Depth This is the reference TensorFlow implementation for training and testing depth estimation models using the method described in M4Depth: A moti

Michaël Fonder 76 Jan 03, 2023
A rule learning algorithm for the deduction of syndrome definitions from time series data.

README This project provides a rule learning algorithm for the deduction of syndrome definitions from time series data. Large parts of the algorithm a

0 Sep 24, 2021