This repo includes some graph-based CTR prediction models and other representative baselines.

Overview

Graph-based CTR prediction

This is a repository designed for graph-based CTR prediction methods, it includes our graph-based CTR prediction methods:

  • Fi-GNN: Modeling Feature Interactions via Graph Neural Networks for CTR Prediction paper
  • GraphFM: Graph Factorization Machines for Feature Interaction Modeling paper

and some other representative baselines:

  • HoAFM: A High-order Attentive Factorization Machine for CTR Prediction paper
  • AutoInt: AutoInt: Automatic Feature Interaction Learning via Self-Attentive Neural Networks paper
  • InterHAt: Interpretable Click-Through Rate Prediction through Hierarchical Attention paper

Requirements:

  • Tensorflow 1.5.0
  • Python 3.6
  • CUDA 9.0+ (For GPU)

Usage

Our code is based on AutoInt.

Input Format

The required input data is in the following format:

  • train_x: matrix with shape (num_sample, num_field). train_x[s][t] is the feature value of feature field t of sample s in the dataset. The default value for categorical feature is 1.
  • train_i: matrix with shape (num_sample, num_field). train_i[s][t] is the feature index of feature field t of sample s in the dataset. The maximal value of train_i is the feature size.
  • train_y: label of each sample in the dataset.

If you want to know how to preprocess the data, please refer to data/Dataprocess/Criteo/preprocess.py

Example

There are four public real-world datasets(Avazu, Criteo, KDD12, MovieLens-1M) that you can use. You can run the code on MovieLens-1M dataset directly in /movielens. The other three datasets are super huge, and they can not be fit into the memory as a whole. Therefore, we split the whole dataset into 10 parts and we use the first file as test set and the second file as valid set. We provide the codes for preprocessing these three datasets in data/Dataprocess. If you want to reuse these codes, you should first run preprocess.py to generate train_x.txt, train_i.txt, train_y.txt as described in Input Format. Then you should run data/Dataprocesss/Kfold_split/StratifiedKfold.py to split the whole dataset into ten folds. Finally you can run scale.py to scale the numerical value(optional).

To help test the correctness of the code and familarize yourself with the code, we upload the first 10000 samples of Criteo dataset in train_examples.txt. And we provide the scripts for preprocessing and training.(Please refer to data/sample_preprocess.sh and run_criteo.sh, you may need to modify the path in config.py and run_criteo.sh).

After you run the data/sample_preprocess.sh, you should get a folder named Criteo which contains part*, feature_size.npy, fold_index.npy, train_*.txt. feature_size.npy contains the number of total features which will be used to initialize the model. train_*.txt is the whole dataset.

Here's how to run the preprocessing.

cd data
mkdir Criteo
python ./Dataprocess/Criteo/preprocess.py
python ./Dataprocess/Kfold_split/stratifiedKfold.py
python ./Dataprocess/Criteo/scale.py

Here's how to train GraphFM on Criteo dataset.

CUDA_VISIBLE_DEVICES=$GPU python -m code.train \
--model_type GraphFM \
                        --data_path $YOUR_DATA_PATH --data Criteo \
                        --blocks 3 --heads 2 --block_shape "[64, 64, 64]" \
                        --ks "[39, 20, 5]" \
                        --is_save --has_residual \
                        --save_path ./models/GraphFM/Criteo/b3h2_64x64x64/ \
                        --field_size 39  --run_times 1 \
                        --epoch 2 --batch_size 1024 \

Here's how to train GraphFM on Avazu dataset.

CUDA_VISIBLE_DEVICES=$GPU python -m code.train \
--model_type GraphFM \
                        --data_path $YOUR_DATA_PATH --data Avazu \
                        --blocks 3 --heads 2 --block_shape "[64, 64, 64]" \
                        --ks "[23, 10, 2]" \
                        --is_save --has_residual \
                        --save_path ./models/GraphFM/Avazu/b3h2_64x64x64/ \
                        --field_size 23  --run_times 1 \
                        --epoch 2 --batch_size 1024 \

You can run the training on the relatively small MovieLens dataset in /movielens.

You should see the output like this:

...
train logs
...
start testing!...
restored from ./models/Criteo/b3h2_64x64x64/1/
test-result = 0.8088, test-logloss = 0.4430
test_auc [0.8088305055534442]
test_log_loss [0.44297631300399626]
avg_auc 0.8088305055534442
avg_log_loss 0.44297631300399626

Citation

If you find this repo useful for your research, please consider citing the following paper:

@inproceedings{li2019fi,
  title={Fi-gnn: Modeling feature interactions via graph neural networks for ctr prediction},
  author={Li, Zekun and Cui, Zeyu and Wu, Shu and Zhang, Xiaoyu and Wang, Liang},
  booktitle={Proceedings of the 28th ACM International Conference on Information and Knowledge Management},
  pages={539--548},
  year={2019}
}

@article{li2021graphfm,
  title={GraphFM: Graph Factorization Machines for Feature Interaction Modeling},
  author={Li, Zekun and Wu, Shu and Cui, Zeyu and Zhang, Xiaoyu},
  journal={arXiv preprint arXiv:2105.11866},
  year={2021}
}

Contact information

You can contact Zekun Li ([email protected]), if there are questions related to the code.

Acknowledgement

This implementation is based on Weiping Song and Chence Shi's AutoInt. Thanks for their sharing and contribution.

Owner
Big Data and Multi-modal Computing Group, CRIPAC
Big Data and Multi-modal Computing Group, Center for Research on Intelligent Perception and Computing
Big Data and Multi-modal Computing Group, CRIPAC
neurodsp is a collection of approaches for applying digital signal processing to neural time series

neurodsp is a collection of approaches for applying digital signal processing to neural time series, including algorithms that have been proposed for the analysis of neural time series. It also inclu

NeuroDSP 224 Dec 02, 2022
Python package for causal inference using Bayesian structural time-series models.

Python Causal Impact Causal inference using Bayesian structural time-series models. This package aims at defining a python equivalent of the R CausalI

Thomas Cassou 219 Dec 11, 2022
Intel(R) Extension for Scikit-learn is a seamless way to speed up your Scikit-learn application

Intel(R) Extension for Scikit-learn* Installation | Documentation | Examples | Support | FAQ With Intel(R) Extension for Scikit-learn you can accelera

Intel Corporation 858 Dec 25, 2022
A fast, scalable, high performance Gradient Boosting on Decision Trees library, used for ranking, classification, regression and other machine learning tasks for Python, R, Java, C++. Supports computation on CPU and GPU.

Website | Documentation | Tutorials | Installation | Release Notes CatBoost is a machine learning method based on gradient boosting over decision tree

CatBoost 6.9k Jan 05, 2023
Combines Bayesian analyses from many datasets.

PosteriorStacker Combines Bayesian analyses from many datasets. Introduction Method Tutorial Output plot and files Introduction Fitting a model to a d

Johannes Buchner 19 Feb 13, 2022
Pandas Machine Learning and Quant Finance Library Collection

Pandas Machine Learning and Quant Finance Library Collection

148 Dec 07, 2022
Simplify stop motion animation with machine learning.

Simplify stop motion animation with machine learning.

Nick Bild 25 Sep 15, 2022
This jupyter notebook project was completed by me and my friend using the dataset from Kaggle

ARM This jupyter notebook project was completed by me and my friend using the dataset from Kaggle. The world Happiness 2017, which ranks 155 countries

1 Jan 23, 2022
Binary Classification Problem with Machine Learning

Binary Classification Problem with Machine Learning Solving Approach: 1) Ultimate Goal of the Assignment: This assignment is about solving a binary cl

Dinesh Mali 0 Jan 20, 2022
Machine learning model evaluation made easy: plots, tables, HTML reports, experiment tracking and Jupyter notebook analysis.

sklearn-evaluation Machine learning model evaluation made easy: plots, tables, HTML reports, experiment tracking, and Jupyter notebook analysis. Suppo

Eduardo Blancas 354 Dec 31, 2022
Cool Python features for machine learning that I used to be too afraid to use. Will be updated as I have more time / learn more.

python-is-cool A gentle guide to the Python features that I didn't know existed or was too afraid to use. This will be updated as I learn more and bec

Chip Huyen 3.3k Jan 05, 2023
Python 3.6+ toolbox for submitting jobs to Slurm

Submit it! What is submitit? Submitit is a lightweight tool for submitting Python functions for computation within a Slurm cluster. It basically wraps

Facebook Incubator 768 Jan 03, 2023
Simple linear model implementations from scratch.

Hand Crafted Models Simple linear model implementations from scratch. Table of contents Overview Project Structure Getting started Citing this project

Jonathan Sadighian 2 Sep 13, 2021
Implementation of deep learning models for time series in PyTorch.

List of Implementations: Currently, the reimplementation of the DeepAR paper(DeepAR: Probabilistic Forecasting with Autoregressive Recurrent Networks

Yunkai Zhang 275 Dec 28, 2022
An MLOps framework to package, deploy, monitor and manage thousands of production machine learning models

Seldon Core: Blazing Fast, Industry-Ready ML An open source platform to deploy your machine learning models on Kubernetes at massive scale. Overview S

Seldon 3.5k Jan 01, 2023
AP1 Transcription Factor Binding Site Prediction

A machine learning project that predicted binding sites of AP1 transcription factor, using ChIP-Seq data and local DNA shape information.

1 Jan 21, 2022
Nixtla is an open-source time series forecasting library.

Nixtla Nixtla is an open-source time series forecasting library. We are helping data scientists and developers to have access to open source state-of-

Nixtla 401 Jan 08, 2023
Land Cover Classification Random Forest

You can perform Land Cover Classification on Satellite Images using Random Forest and visualize the result using Earthpy package. Make sure to install the required packages and such as

Dr. Sander Ali Khowaja 1 Jan 21, 2022
MLBox is a powerful Automated Machine Learning python library.

MLBox is a powerful Automated Machine Learning python library. It provides the following features: Fast reading and distributed data preprocessing/cle

Axel 1.4k Jan 06, 2023
A benchmark of data-centric tasks from across the machine learning lifecycle.

A benchmark of data-centric tasks from across the machine learning lifecycle.

61 Dec 28, 2022