Hierarchical User Intent Graph Network for Multimedia Recommendation

Related tags

Deep LearningHUIGN
Overview

Hierarchical User Intent Graph Network for Multimedia Recommendation

This is our Pytorch implementation for the paper: Hierarchical User Intent Graph Network for Multimedia Recommendation

Environment Requirement

The code has been tested running under Python 3.5.2. The required packages are as follows:

  • Pytorch == 1.1.0
  • torch-cluster == 1.4.2
  • torch-geometric == 1.2.1
  • torch-scatter == 1.2.0
  • torch-sparse == 0.4.0
  • numpy == 1.16.0

Example to Run the Codes

The instruction of commands has been clearly stated in the codes.

  • Movielens dataset
    python main.py --data_path 'Movielens' --l_r 0.0001 --weight_decay 0.0001 --batch_size 1024 --dim_x 64 --num_workers 30 --topK 10 --cluster_list 32 8 4
  • Tiktok dataset
    python train.py --data_path 'Tiktok' --l_r 0.0005 --weight_decay 0.1 --batch_size 1024 --dim_latent 64 --num_workers 30 --topK 10 --cluster_list 32 8 4
  • Kwai dataset
    python train.py --data_path 'Kwai' --l_r 0.0005 --weight_decay 0.1 --batch_size 1024 --dim_latent 64 --num_workers 30 --topK 10 --cluster_list 32 8 4

Some important arguments:

has_ind: It indicates the optional independence loss function.

has_cro: It indicates the optional cross_entropy loss function.

has_v, has_a, and has_t: They are used to indicate which modalities are included in this work.

--num_links: It indicates the number of co-occurrence.

--cluster_list: It describes the structure of hierarchical user intents.

Dataset

We provide three processed datasets: Movielnes, Tiktok, and Kwai.

#Interactions #Users #Items Visual Acoustic Textual
Movielens 1,239,508 55,485 5,986 2,048 128 100
Tiktok 726,065 36,656 76,085 128 128 128
Kwai 298,492 86,483 7,010 2,048 - -

-train.npy Train file. Each line is a pair of one user and one of her/his postive items: (userID and micro-video ID)
-val_full.npy Validation file. Each line is a user with her/his positive interactions with items: (userID and micro-video ID)
-test_full.npy Test file. Each line is a user with her/his positive interactions with items: (userID and micro-video ID)

Owner
Thank you for your attention. If you have any questions, please email me.
GDR-Net: Geometry-Guided Direct Regression Network for Monocular 6D Object Pose Estimation. (CVPR 2021)

GDR-Net This repo provides the PyTorch implementation of the work: Gu Wang, Fabian Manhardt, Federico Tombari, Xiangyang Ji. GDR-Net: Geometry-Guided

169 Jan 07, 2023
This repository gives an example on how to preprocess the data of the HECKTOR challenge

HECKTOR 2021 challenge This repository gives an example on how to preprocess the data of the HECKTOR challenge. Any other preprocessing is welcomed an

56 Dec 01, 2022
Motion planning environment for Sampling-based Planners

Sampling-Based Motion Planners' Testing Environment Sampling-based motion planners' testing environment (sbp-env) is a full feature framework to quick

Soraxas 23 Aug 23, 2022
Generative Models for Graph-Based Protein Design

Graph-Based Protein Design This repo contains code for Generative Models for Graph-Based Protein Design by John Ingraham, Vikas Garg, Regina Barzilay

John Ingraham 159 Dec 15, 2022
GANmouflage: 3D Object Nondetection with Texture Fields

GANmouflage: 3D Object Nondetection with Texture Fields Rui Guo1 Jasmine Collins

29 Aug 10, 2022
Informal Persian Universal Dependency Treebank

Informal Persian Universal Dependency Treebank (iPerUDT) Informal Persian Universal Dependency Treebank, consisting of 3000 sentences and 54,904 token

Roya Kabiri 0 Jan 05, 2022
Official PyTorch implementation of "Physics-aware Difference Graph Networks for Sparsely-Observed Dynamics".

Physics-aware Difference Graph Networks for Sparsely-Observed Dynamics This repository is the official PyTorch implementation of "Physics-aware Differ

USC-Melady 46 Nov 20, 2022
PyTorch implementation of deep GRAph Contrastive rEpresentation learning (GRACE).

GRACE The official PyTorch implementation of deep GRAph Contrastive rEpresentation learning (GRACE). For a thorough resource collection of self-superv

Big Data and Multi-modal Computing Group, CRIPAC 186 Dec 27, 2022
An Intelligent Self-driving Truck System For Highway Transportation

Inceptio Intelligent Truck System An Intelligent Self-driving Truck System For Highway Transportation Note The code is still in development. OS requir

InceptioResearch 11 Jul 13, 2022
All of the figures and notebooks for my deep learning book, for free!

"Deep Learning - A Visual Approach" by Andrew Glassner This is the official repo for my book from No Starch Press. Ordering the book My book is called

Andrew Glassner 227 Jan 04, 2023
One line to host them all. Bootstrap your image search case in minutes.

One line to host them all. Bootstrap your image search case in minutes. Survey NOW gives the world access to customized neural image search in just on

Jina AI 403 Dec 30, 2022
Nicholas Lee 3 Jan 09, 2022
Machine learning and Deep learning models, deploy on telegram (the best social media)

Semi Intelligent BOT The project involves : Classifying fake news Classifying objects such as aeroplane, automobile, bird, cat, deer, dog, frog, horse

MohammadReza Norouzi 5 Mar 06, 2022
Code for CVPR 2021 paper TransNAS-Bench-101: Improving Transferrability and Generalizability of Cross-Task Neural Architecture Search.

TransNAS-Bench-101 This repository contains the publishable code for CVPR 2021 paper TransNAS-Bench-101: Improving Transferrability and Generalizabili

Yawen Duan 17 Nov 20, 2022
Multivariate Boosted TRee

Multivariate Boosted TRee What is MBTR MBTR is a python package for multivariate boosted tree regressors trained in parameter space. The package can h

SUPSI-DACD-ISAAC 61 Dec 19, 2022
The official code for paper "R2D2: Recursive Transformer based on Differentiable Tree for Interpretable Hierarchical Language Modeling".

R2D2 This is the official code for paper titled "R2D2: Recursive Transformer based on Differentiable Tree for Interpretable Hierarchical Language Mode

Alipay 49 Dec 17, 2022
covid question answering datasets and fine tuned models

Covid-QA Fine tuned models for question answering on Covid-19 data. Hosted Inference This model has been contributed to huggingface.Click here to see

Abhijith Neil Abraham 19 Sep 09, 2021
A Conditional Point Diffusion-Refinement Paradigm for 3D Point Cloud Completion

A Conditional Point Diffusion-Refinement Paradigm for 3D Point Cloud Completion This repo intends to release code for our work: Zhaoyang Lyu*, Zhifeng

Zhaoyang Lyu 68 Jan 03, 2023
SimpleDepthEstimation - An unified codebase for NN-based monocular depth estimation methods

SimpleDepthEstimation Introduction This is an unified codebase for NN-based monocular depth estimation methods, the framework is based on detectron2 (

8 Dec 13, 2022
Codes for building and training the neural network model described in Domain-informed neural networks for interaction localization within astroparticle experiments.

Domain-informed Neural Networks Codes for building and training the neural network model described in Domain-informed neural networks for interaction

DIDACTS 0 Dec 13, 2021