推荐系统论文、学习资料、业界分享
动态更新工作中实现或者阅读过的推荐系统相关论文、学习资料和业界分享,作为自己工作的总结,也希望能为推荐系统相关行业的同学带来便利。 所有资料均来自于互联网,如有侵权,请联系王喆。同时欢迎对推荐系统感兴趣的同学与我讨论相关问题,我的联系方式如下:
- Email: wzhe06@gmail.com
- LinkedIn: 王喆的LinkedIn
- 知乎私信: 王喆的知乎
其他相关资源
目录
Retrieval and Rerank
- [Distillation] Distillation Based Multi-task Learning- A Candidate Generation Model for Improving Reading Duration
- [PRM] Personalized Re-ranking for Recommendation
- [COLD] Towards the Next Generation of Pre-ranking System
- [Seq2Slate] Re-ranking and Slate Optimization with RNNs
- [Hulu Diversity] Fast Greedy Map Inference for Determinantal Point Processes to Improve Recommendation Diversity
- [TDM] Learning Tree-based Deep Model for Recommender Systems
- [LTR] From RankNet to LambdaRank to LambdaMART- An Overview
- [AirBnb Rerank] Managing Diversity in Airbnb Search
- [Deep Retrieval] Learning a Retrievable Structure for Large-scale Recommendations
Deep Learning Recommender System
- [DCN] Deep & Cross Network for Ad Click Predictions (Stanford 2017)
- [Deep Crossing] Deep Crossing - Web-Scale Modeling without Manually Crafted Combinatorial Features (Microsoft 2016)
- [DIN] Deep Interest Network for Click-Through Rate Prediction (Alibaba 2018)
- [DL Recsys Intro] Deep Learning based Recommender System- A Survey and New Perspectives (UNSW 2018)
- [PinnerFormer] Sequence Modeling for User Representation at Pinterest
- [xDeepFM] xDeepFM - Combining Explicit and Implicit Feature Interactions for Recommender Systems (USTC 2018)
- [Image CTR] Image Matters - Visually modeling user behaviors using Advanced Model Server (Alibaba 2018)
- [CDL] Collaborative Deep Learning for Recommender Systems (HKUST, 2015)
- [DSSM in Recsys] A Multi-View Deep Learning Approach for Cross Domain User Modeling in Recommendation Systems (Microsoft 2015)
- [AFM] Attentional Factorization Machines - Learning the Weight of Feature Interactions via Attention Networks (ZJU 2017)
- [DIEN] Deep Interest Evolution Network for Click-Through Rate Prediction (Alibaba 2019)
- [Wide&Deep] Wide & Deep Learning for Recommender Systems (Google 2016)
- [DSSM] Learning Deep Structured Semantic Models for Web Search using Clickthrough Data (UIUC 2013)
- [NCF] Neural Collaborative Filtering (NUS 2017)
- [FNN] Deep Learning over Multi-field Categorical Data (UCL 2016)
- [DeepFM] A Factorization-Machine based Neural Network for CTR Prediction (HIT-Huawei 2017)
- [NFM] Neural Factorization Machines for Sparse Predictive Analytics (NUS 2017)
- [Latent Cross] Latent Cross- Making Use of Context in Recurrent Recommender Systems (Google 2018)
- [TransAct] Transformer-based Real-time User Action Model for Recommendation at Pinterest
Embedding
- [Negative Sampling] Word2vec Explained Negative-Sampling Word-Embedding Method (2014)
- [SDNE] Structural Deep Network Embedding (THU 2016)
- [Item2Vec] Item2Vec-Neural Item Embedding for Collaborative Filtering (Microsoft 2016)
- [Word2Vec] Distributed Representations of Words and Phrases and their Compositionality (Google 2013)
- [LSH] Locality-Sensitive Hashing for Finding Nearest Neighbors (IEEE 2008)
- [Word2Vec] Word2vec Parameter Learning Explained (UMich 2016)
- [GraphSAGE]Inductive Representation Learning on Large Graphs
- [Node2vec] Node2vec - Scalable Feature Learning for Networks (Stanford 2016)
- [Graph Embedding] DeepWalk- Online Learning of Social Representations (SBU 2014)
- [RippleNet] Propagating User Preferences on the Knowledge Graph for Recommender Systems
- [Airbnb Embedding] Real-time Personalization using Embeddings for Search Ranking at Airbnb (Airbnb 2018)
- [Alibaba Embedding] Billion-scale Commodity Embedding for E-commerce Recommendation in Alibaba (Alibaba 2018)
- [KGAT] Knowledge Graph Attention Network for Recommendation
- [Word2Vec] Efficient Estimation of Word Representations in Vector Space (Google 2013)
- [Explainable RS]Fairness-aware Explainable Recommendation over Knowledge Graphs
- [LINE] LINE - Large-scale Information Network Embedding (MSRA 2015)
Famous Machine Learning Papers
- [Attention] Attention is All You Need
- [RNN] Learning Phrase Representations using RNN Encoder–Decoder for Statistical Machine Translation (UofM 2014)
- [CNN] ImageNet Classification with Deep Convolutional Neural Networks (UofT 2012)
Multi-Task
- [ESMM] Entire Space Multi-task Model- An Effective Approach for Estimating Post-click Conversion Rate
- [MMoE] Modeling Task Relationships in Multi-task Learning with Multi-gate Mixture-of-Experts
- [PLE] Progressive Layered Extraction (PLE)- A Novel Multi-Task Learning (MTL) Model for Personalized Recommendations
Feature Data and Infra
- [Privacy] Privacy-preserving News Recommendation Model Learning
- [EdgeRec] Recommender System on Edge in Mobile Taobao
- [MMKGs] Multi-modal Knowledge Graphs for Recommender Systems
- [Delayed Feedback] Capturing Delayed Feedback in Conversion Rate Prediction via Elapsed-time Sampling
- [Delayed Feedback] Handling Many Conversions Per Click in Modeling Delayed Feedback
- [ViLBERT] Pretraining Task-agnostic Visiolinguistic Representations for Vision-and-language Tasks
- [MM-Rec] Multimodal News Recommendation
Classic Recommender System
- [MF] Matrix Factorization Techniques for Recommender Systems (Yahoo 2009)
- [Earliest CF] Using Collaborative Filtering to Weave an Information Tapestry (PARC 1992)
- [Recsys Intro] Recommender Systems Handbook (FRicci 2011)
- [Recsys Intro slides] Recommender Systems An introduction (DJannach 2014)
- [CF] Amazon Recommendations Item-to-Item Collaborative Filtering (Amazon 2003)
- [ItemCF] Item-Based Collaborative Filtering Recommendation Algorithms (UMN 2001)
- [Bilinear] Personalized Recommendation on Dynamic Content Using Predictive Bilinear Models (Yahoo 2009)
LLM Recommender System
- [Once] Boosting Content-based Recommendation with Both Open-and Closed-source Large Language Models
- [PALR] Personalization Aware LLMs for Recommendation
- [Onesearch] A preliminary exploration of the unified end-to-end generative framework for e-commerce search
- [NoteLLM] A Retrievable Large Language Model for Note Recommendation
- [PMG] Personalized Multimodal Generation with Large Language Models
- [MTGR] Industrial-Scale Generative Recommendation Framework in Meituan
- [MoRecl] Where to Go Next for Recommender Systems? Id-vs. Modality-based Recommender Models
- [GR] Generative Recommendation- Towards Next-generation Recommender Paradigm
- [MetaGR] Actions Speak Louder than Words- Trillion-Parameter Sequential Transducers for Generative Recommendations
- [OneRec] Unifying Retrieve and Rank with Generative Recommender and Preference Alignment
- [ClickPrompt] CTR Models are Strong Prompt Generators for Adapting Language Models to CTR Prediction
- [Tiger] Recommender Systems with Generative Retrieval
Evaluation
- [EE Evaluation Intro] Offline Evaluation and Optimization for Interactive Systems (Microsoft 2015)
- [Bootstrapped Replay] Improving offline evaluation of contextual bandit algorithms via bootstrapping techniques (Ulille 2014)
- [InterLeaving] Large-Scale Validation and Analysis of Interleaved Search Evaluation (Yahoo 2012)
- [RecSim] A Configurable Simulation Platform for Recommender Systems
- [Replay] Unbiased Offline Evaluation of Contextual-bandit-based News Article Recommendation Algorithms (Yahoo 2012)
- [Eval Agent] User Behavior Simulation with Large Language Model based Agents
- [Classic Metrics] A Survey of Accuracy Evaluation Metrics of Recommendation Tasks (Microsoft 2009)
Reinforcement Learning in Reco
- [Active Learning] Active Learning in Collaborative Filtering Recommender Systems(UNIBZ 2014)
- [RL Music] Exploration in Interactive Personalized Music Recommendation- A Reinforcement Learning Approach (NUS 2013)
- [Active Learning] A survey of active learning in collaborative filtering recommender systems (POLIMI 2016)
- [DRN] A Deep Reinforcement Learning Framework for News Recommendation (MSRA 2018)
Industry Recommender System
- [Pinterest] Personalized content blending In the Pinterest home feed (Pinterest 2016)
- [Pinterest] Graph Convolutional Neural Networks for Web-Scale Recommender Systems (Pinterest 2018)
- [Airbnb] Search Ranking and Personalization at Airbnb Slides (Airbnb 2018)
- [Baidu slides] DNN in Baidu Ads (Baidu 2017)
- [Quora] Building a Machine Learning Platform at Quora (Quora 2016)
- [Airbnb] Optimizing Airbnb Search Journey with Multi-task Learning
- [Alibaba] Search-based User Interest Modeling with Lifelong Sequential Behavior Data for CTR Prediction
- [Alibaba Star] One Model to Serve All- Star Topology Adaptive Recommender for Multi-domain CTR Prediction
- [Netflix] The Netflix Recommender System- Algorithms, Business Value, and Innovation (Netflix 2015)
- [Youtube] Deep Neural Networks for YouTube Recommendations (Youtube 2016)
- [Alibaba] Capturing Conversion Rate Fluctuation During Sales Promotions- A Novel Historical Data Reuse Approach
- [Airbnb] Applying Deep Learning To Airbnb Search (Airbnb 2018)
- [Alibaba] Image Matters- Visually Modeling User Behaviors Using Advanced Model Server
Exploration and Exploitation
- [EE in Ads] Customer Acquisition via Display Advertising Using MultiArmed Bandit Experiments (UMich 2015)
- [EE in Ads] Exploitation and Exploration in a Performance based Contextual Advertising System (Yahoo 2010)
- [EE in AlphaGo]Mastering the game of Go with deep neural networks and tree search (Deepmind 2016)
- [UCB1] Bandit Algorithms Continued - UCB1 (Noel Welsh 2010)
- [Spotify] Explore, Exploit, and Explain- Personalizing Explainable Recommendations with Bandits (Spotify 2018)
- [TS Intro] Thompson Sampling Slides (Berkeley 2010)
- [Thompson Sampling] An Empirical Evaluation of Thompson Sampling (Yahoo 2011)
- [UCT] Exploration exploitation in Go UCT for Monte-Carlo Go (UPSUD 2016)
- [LinUCB] A Contextual-Bandit Approach to Personalized News Article Recommendation (Yahoo 2010)
- [RF in MAB]Random Forest for the Contextual Bandit Problem (Orange 2016)
- [EE Intro] Exploration and Exploitation Problem Introduction by Wang Zhe (Hulu 2017)
Cold Start and Debias
- [RS Bias] Bias and Debias in Recommender System- A Survey and Future Directions
- [Meta Emb]Warm Up Cold-start Advertisements- Improving CTR Predictions via Learning to Learn ID Embeddings
- [PAL] A Position-Bias Aware Learning Framework for CTR Prediction in Live Recommender Systems
- [DICE] Disentangling User Interest and Conformity for Recommendation with Causal Embedding