This repository collects 100 papers related to negative sampling methods.

Overview

Negative-Sampling-Paper

This repository collects 100 papers related to negative sampling methods, covering multiple research fields such as Recommendation Systems (RS), Computer Vision (CV),Natural Language Processing (NLP) and Contrastive Learning (CL).

Existing negative sampling methods can be roughly divided into five categories: Static Negative Sampling, Hard Negative Sampling, Adversarial Sampling, Graph-based Sampling and Additional data enhanced Sampling.

Category

Static Negative Sampling

  • BPR: Bayesian Personalized Ranking from Implicit Feedback. UAI(2009) [RS] [PDF]

  • Real-Time Top-N Recommendation in Social Streams. RecSys(2012) [RS] [PDF]

  • Distributed Representations of Words and Phrases and their Compositionality. NIPS(2013) [NLP] [PDF]

  • word2vec Explained: Deriving Mikolov et al.'s Negative-Sampling Word-Embedding Method. arXiv(2014) [NLP] [PDF]

  • Deepwalk: Online learning of social representations. KDD(2014) [GRL] [PDF]

  • LINE: Large-scale Information Network Embedding. WWW(2015) [GRL] [PDF]

  • Context- and Content-aware Embeddings for Query Rewriting in Sponsored Search. SIGIR(2015) [NLP] [PDF]

  • node2vec: Scalable Feature Learning for Networks. KDD(2016) [NLP] [PDF]

  • Fast Matrix Factorization for Online Recommendation with Implicit Feedback. SIGIR(2016) [RS] [PDF]

  • Word2vec applied to Recommendation: Hyperparameters Matter. RecSys(2018) [RS] [PDF]

  • General Knowledge Embedded Image Representation Learning. TMM(2018) [CV] [PDF]

  • Alleviating Cold-Start Problems in Recommendation through Pseudo-Labelling over Knowledge Graph. WSDM(2021) [RS] [PDF]

Hard Negative Sampling

  • Example-based learning for view-based human face detection. TPAMI(1998) [CV] [PDF]

  • Adaptive Importance Sampling to Accelerate Training of a Neural Probabilistic Language Model. T-NN(2008) [NLP] [PDF]

  • Optimizing Top-N Collaborative Filtering via Dynamic Negative Item Sampling. SIGIR(2013) [RS] [PDF]

  • Bootstrapping Visual Categorization With Relevant Negatives. TMM(2013) [CV] [PDF]

  • Improving Pairwise Learning for Item Recommendation from Implicit Feedback. WSDM(2014) [RS] [PDF]

  • Improving Latent Factor Models via Personalized Feature Projection for One Class Recommendation. CIKM(2015) [RS] [PDF]

  • Noise-Contrastive Estimation for Answer Selection with Deep Neural Networks. CIKM(2016) [NLP] [PDF]

  • RankMBPR: Rank-aware Mutual Bayesian Personalized Ranking for Item Recommendation. WAIM(2016) [RS] [PDF]

  • Training Region-Based Object Detectors With Online Hard Example Mining. CVPR(2016) [CV] [PDF]

  • Hard Negative Mining for Metric Learning Based Zero-Shot Classification. ECCV(2016) [ML] [PDF]

  • Vehicle detection in aerial images based on region convolutional neural networks and hard negative example mining. Sensors(2017) [CV] [PDF]

  • WalkRanker: A Unified Pairwise Ranking Model with Multiple Relations for Item Recommendation. AAAI(2018) [RS] [PDF]

  • Bootstrapping Entity Alignment with Knowledge Graph Embedding. IJCAI(2018) [KGE] [PDF]

  • Improving Occlusion and Hard Negative Handling for Single-Stage Pedestrian Detectors. CVPR(2018) [CV] [PDF]

  • NSCaching: Simple and Efficient Negative Sampling for Knowledge Graph Embedding. ICDE(2019) [KGE] [PDF]

  • Meta-Transfer Learning for Few-Shot Learning. CVPR(2019) [CV] [PDF]

  • ULDor: A Universal Lesion Detector for CT Scans with Pseudo Masks and Hard Negative Example Mining. ISBI(2019) [CV] [PDF]

  • Distributed representation learning via node2vec for implicit feedback recommendation. NCA(2020) [NLP] [PDF]

  • Simplify and Robustify Negative Sampling for Implicit Collaborative Filtering. arXiv(2020) [RS] [PDF]

  • Hard Negative Mixing for Contrastive Learning. arXiv(2020) [CL] [PDF]

  • Bundle Recommendation with Graph Convolutional Networks. SIGIR(2020) [RS] [PDF]

  • Supervised Contrastive Learning. NIPS(2020) [CL] [PDF]

  • Curriculum Meta-Learning for Next POI Recommendation. KDD(2021) [RS] [PDF]

  • Boosting the Speed of Entity Alignment 10×: Dual Attention Matching Network with Normalized Hard Sample Mining. WWW(2021) [KGE] [PDF]

  • Hard-Negatives or Non-Negatives? A Hard-Negative Selection Strategy for Cross-Modal Retrieval Using the Improved Marginal Ranking Loss. ICCV(2021) [CV] [PDF]

Adversarial Sampling

  • Deep Generative Image Models using a Laplacian Pyramid of Adversarial Networks. NIPS(2015) [CV] [PDF]

  • IRGAN: A Minimax Game for Unifying Generative and Discriminative Information Retrieval Models. SIGIR(2017) [IR] [PDF]

  • SeqGAN: Sequence Generative Adversarial Nets with Policy Gradient. AAAI(2017) [NLP] [PDF]

  • KBGAN: Adversarial Learning for Knowledge Graph Embeddings. NAACL(2018) [KGE] [PDF]

  • Neural Memory Streaming Recommender Networks with Adversarial Training. KDD(2018) [RS] [PDF]

  • GraphGAN: Graph Representation Learning with Generative Adversarial Nets. AAAI(2018) [GRL] [PDF]

  • CFGAN: A Generic Collaborative Filtering Framework based on Generative Adversarial Networks. CIKM(2018) [RS] [PDF]

  • Adversarial Contrastive Estimation. ACL(2018) [NLP] [PDF]

  • Incorporating GAN for Negative Sampling in Knowledge Representation Learning. AAAI(2018) [KGE] [PDF]

  • Exploring the potential of conditional adversarial networks for optical and SAR image matching. IEEE J-STARS(2018) [CV] [PDF]

  • Deep Adversarial Metric Learning. CVPR(2018) [CV] [PDF]

  • Adversarial Detection with Model Interpretation. KDD(2018) [ML] [PDF]

  • Adversarial Sampling and Training for Semi-Supervised Information Retrieval. WWW(2019) [IR] [PDF]

  • Deep Adversarial Social Recommendation. IJCAI(2019) [RS] [PDF]

  • Adversarial Learning on Heterogeneous Information Networks. KDD(2019) [HIN] [PDF]

  • Regularized Adversarial Sampling and Deep Time-aware Attention for Click-Through Rate Prediction. CIKM(2019) [RS] [PDF]

  • Adversarial Knowledge Representation Learning Without External Model. IEEE Access(2019) [KGE] [PDF]

  • Adversarial Binary Collaborative Filtering for Implicit Feedback. AAAI(2019) [RS] [PDF]

  • ProGAN: Network Embedding via Proximity Generative Adversarial Network. KDD(2019) [GRL] [PDF]

  • Generating Fluent Adversarial Examples for Natural Languages. ACL(2019) [NLP] [PDF]

  • IPGAN: Generating Informative Item Pairs by Adversarial Sampling. TNLLS(2020) [RS] [PDF]

  • Contrastive Learning with Adversarial Examples. arXiv(2020) [CL] [PDF]

  • PURE: Positive-Unlabeled Recommendation with Generative Adversarial Network. KDD(2021) [RS] [PDF]

  • Negative Sampling for Knowledge Graph Completion Based on Generative Adversarial Network. ICCCI(2021) [KGE] [PDF]

  • Synthesizing Adversarial Negative Responses for Robust Response Ranking and Evaluation. arXiv(2021) [NLP] [PDF]

  • Adversarial Feature Translation for Multi-domain Recommendation. KDD(2021) [RS] [PDF]

  • Adversarial training regularization for negative sampling based network embedding. Information Sciences(2021) [GRL] [PDF]

  • Adversarial Caching Training: Unsupervised Inductive Network Representation Learning on Large-Scale Graphs. TNNLS(2021) [GRL] [PDF]

  • A Robust and Generalized Framework for Adversarial Graph Embedding. arxiv(2021) [GRL] [PDF]

  • Instance-wise Hard Negative Example Generation for Contrastive Learning in Unpaired Image-to-Image Translation. ICCV(2021) [CV] [PDF]

Graph-based Sampling

  • ACRec: a co-authorship based random walk model for academic collaboration recommendation. WWW(2014) [RS] [PDF]

  • GNEG: Graph-Based Negative Sampling for word2vec. ACL(2018) [NLP] [PDF]

  • Graph Convolutional Neural Networks for Web-Scale Recommender Systems. KDD(2018) [RS] [PDF]

  • SamWalker: Social Recommendation with Informative Sampling Strategy. WWW(2019) [RS] [PDF]

  • Understanding Negative Sampling in Graph Representation Learning. KDD(2020) [GRL] [PDF]

  • Reinforced Negative Sampling over Knowledge Graph for Recommendation. WWW(2020) [RS] [PDF]

  • MixGCF: An Improved Training Method for Graph Neural Network-based Recommender Systems. KDD(2021) [RS] [PDF]

  • SamWalker++: recommendation with informative sampling strategy. TKDE(2021) [RS] [PDF]

  • DSKReG: Differentiable Sampling on Knowledge Graph for Recommendation with Relational GNN. CIKM(2021) [RS] [PDF]

Additional data enhanced Sampling

  • Leveraging Social Connections to Improve Personalized Ranking for Collaborative Filtering. CIKM(2014) [RS] [PDF]

  • Social Recommendation with Strong and Weak Ties. CIKM(2016) [RS] [PDF]

  • Bayesian Personalized Ranking with Multi-Channel User Feedback. RecSys(2016) [RS] [PDF]

  • Joint Geo-Spatial Preference and Pairwise Ranking for Point-of-Interest Recommendation. ICTAI(2017) [RS] [PDF]

  • A Personalised Ranking Framework with Multiple Sampling Criteria for Venue Recommendation. CIKM(2017) [RS] [PDF]

  • An Improved Sampling for Bayesian Personalized Ranking by Leveraging View Data. WWW(2018) [RS] [PDF]

  • Reinforced Negative Sampling for Recommendation with Exposure Data. IJCAI(2019) [RS] [PDF]

  • Geo-ALM: POI Recommendation by Fusing Geographical Information and Adversarial Learning Mechanism. IJCAI(2019) [RS] [PDF]

  • Bayesian Deep Learning with Trust and Distrust in Recommendation Systems. WI(2019) [RS] [PDF]

  • Socially-Aware Self-Supervised Tri-Training for Recommendation. arXiv(2021) [RS] [PDF]

  • DGCN: Diversified Recommendation with Graph Convolutional Networks. WWW(2021) [RS] [PDF]

Future Outlook

False Negative Problem

  • Incremental False Negative Detection for Contrastive Learning. arXiv(2021) [CL] [PDF]

  • Graph Debiased Contrastive Learning with Joint Representation Clustering. IJCAI(2021) [GRL & CL] [PDF]

  • Relation-aware Graph Attention Model With Adaptive Self-adversarial Training. AAAI(2021) [KGE] [PDF]

Curriculum Learning

  • On The Power of Curriculum Learning in Training Deep Networks. ICML(2016) [CV] [PDF]

  • Graph Representation with Curriculum Contrastive Learning. IJCAI(2021) [GRL & CL] [PDF]

Negative Sampling Ratio

  • Are all negatives created equal in contrastive instance discrimination. arXiv(2020) [CL] [PDF]

  • SimpleX: A Simple and Strong Baseline for Collaborative Filtering. CIKM(2021) [RS] [PDF]

  • Rethinking InfoNCE: How Many Negative Samples Do You Need. arXiv(2021) [CL] [PDF]

Debiased Sampling

  • Debiased Contrastive Learning. NIPS(2020) [CL] [PDF]

  • Contrastive Learning for Debiased Candidate Generation in Large-Scale Recommender Systems. KDD(2021) [RS] [PDF]

Non-Sampling

  • Beyond Hard Negative Mining: Efficient Detector Learning via Block-Circulant Decomposition. ICCV(2013) [CV] [PDF]

  • Efficient Heterogeneous Collaborative Filtering without Negative Sampling for Recommendation. AAAI(2020) [RS] [PDF]

  • Efficient Non-Sampling Knowledge Graph Embedding. WWW(2021) [KGE] [PDF]

Owner
RUCAIBox
An enthusiastic group that aims to create beautiful things with AI
RUCAIBox
Code for "Unsupervised Layered Image Decomposition into Object Prototypes" paper

DTI-Sprites Pytorch implementation of "Unsupervised Layered Image Decomposition into Object Prototypes" paper Check out our paper and webpage for deta

40 Dec 22, 2022
License Plate Detection Application

LicensePlate_Project 🚗 🚙 [Project] 2021.02 ~ 2021.09 License Plate Detection Application Overview 1. 데이터 수집 및 라벨링 차량 번호판 이미지를 직접 수집하여 각 이미지에 대해 '번호판

4 Oct 10, 2022
Mmrotate - OpenMMLab Rotated Object Detection Benchmark

OpenMMLab website HOT OpenMMLab platform TRY IT OUT 📘 Documentation | 🛠️ Insta

OpenMMLab 1.2k Jan 04, 2023
EfficientNetv2 TensorRT int8

EfficientNetv2_TensorRT_int8 EfficientNetv2模型实现来自https://github.com/d-li14/efficientnetv2.pytorch 环境配置 ubuntu:18.04 cuda:11.0 cudnn:8.0 tensorrt:7

34 Apr 24, 2022
Prototype-based Incremental Few-Shot Semantic Segmentation

Prototype-based Incremental Few-Shot Semantic Segmentation Fabio Cermelli, Massimiliano Mancini, Yongqin Xian, Zeynep Akata, Barbara Caputo -- BMVC 20

Fabio Cermelli 21 Dec 29, 2022
Implementation of SSMF: Shifting Seasonal Matrix Factorization

SSMF Implementation of SSMF: Shifting Seasonal Matrix Factorization, Koki Kawabata, Siddharth Bhatia, Rui Liu, Mohit Wadhwa, Bryan Hooi. NeurIPS, 2021

Koki Kawabata 9 Jun 10, 2022
Iterative Normalization: Beyond Standardization towards Efficient Whitening

IterNorm Code for reproducing the results in the following paper: Iterative Normalization: Beyond Standardization towards Efficient Whitening Lei Huan

Lei Huang 21 Dec 27, 2022
Pytorch-diffusion - A basic PyTorch implementation of 'Denoising Diffusion Probabilistic Models'

PyTorch implementation of 'Denoising Diffusion Probabilistic Models' This reposi

Arthur Juliani 76 Jan 07, 2023
Example for AUAV 2022 with obstacle avoidance.

AUAV 2022 Sample This is a sample PX4 based quadrotor path planning framework based on Ubuntu 20.04 and ROS noetic for the IEEE Autonomous UAS 2022 co

James Goppert 11 Sep 16, 2022
Simple reimplemetation experiments about FcaNet

FcaNet-CIFAR An implementation of the paper FcaNet: Frequency Channel Attention Networks on CIFAR10/CIFAR100 dataset. how to run Code: python Cifar.py

76 Feb 04, 2021
Lucid Sonic Dreams syncs GAN-generated visuals to music.

Lucid Sonic Dreams Lucid Sonic Dreams syncs GAN-generated visuals to music. By default, it uses NVLabs StyleGAN2, with pre-trained models lifted from

731 Jan 02, 2023
BboxToolkit is a tiny library of special bounding boxes.

BboxToolkit is a light codebase collecting some practical functions for the special-shape detection, such as oriented detection

jbwang1997 73 Jan 01, 2023
PyTorch implementation of PSPNet segmentation network

pspnet-pytorch PyTorch implementation of PSPNet segmentation network Original paper Pyramid Scene Parsing Network Details This is a slightly different

Roman Trusov 532 Dec 29, 2022
This script runs neural style transfer against the provided content image.

Neural Style Transfer Content Style Output Description: This script runs neural style transfer against the provided content image. The content image m

Martynas Subonis 0 Nov 25, 2021
Video2x - A lossless video/GIF/image upscaler achieved with waifu2x, Anime4K, SRMD and RealSR.

Official Discussion Group (Telegram): https://t.me/video2x A Discord server is also available. Please note that most developers are only on Telegram.

K4YT3X 5.9k Dec 31, 2022
DANet for Tabular data classification/ regression.

Deep Abstract Networks A pyTorch implementation for AAAI-2022 paper DANets: Deep Abstract Networks for Tabular Data Classification and Regression. Bri

Ronnie Rocket 55 Sep 14, 2022
ArtEmis: Affective Language for Art

ArtEmis: Affective Language for Art Created by Panos Achlioptas, Maks Ovsjanikov, Kilichbek Haydarov, Mohamed Elhoseiny, Leonidas J. Guibas Introducti

Panos 268 Dec 12, 2022
MutualGuide is a compact object detector specially designed for embedded devices

Introduction MutualGuide is a compact object detector specially designed for embedded devices. Comparing to existing detectors, this repo contains two

ZHANG Heng 103 Dec 13, 2022
Show Me the Whole World: Towards Entire Item Space Exploration for Interactive Personalized Recommendations

HierarchicyBandit Introduction This is the implementation of WSDM 2022 paper : Show Me the Whole World: Towards Entire Item Space Exploration for Inte

yu song 5 Sep 09, 2022
Mip-NeRF: A Multiscale Representation for Anti-Aliasing Neural Radiance Fields.

This repository contains the code release for Mip-NeRF: A Multiscale Representation for Anti-Aliasing Neural Radiance Fields. This implementation is written in JAX, and is a fork of Google's JaxNeRF

Google 625 Dec 30, 2022