Resources listed here are on my to-read, to-do, to-try lists, not endorsements. I collect these typically at the beginning of projects and I go through them as time progresses when I want to explore a new way of looking at the problem I am working on.
- xQuAD : Exploiting Query Reformulations for Web Search Result Diversification
WWW 2010
- Counterfactual Estimation and Optimization of Click Metrics for Search Engines
Microsoft
Facebook
WWW 2015
- Cascade Ranking for Operational E-commerce Search
Alibaba
KDD 2017
- Click Shaping to Optimize Multiple Objectives
Yahoo!
KDD 2011
- Constrained Optimization for Homepage Relevance
LinkedIn
WWW 2015
- Multi-objective Relevance Ranking
Amazon
SIGIR 2019
- Personalized Click Shaping through Lagrangian Duality for Online Recommendation
LinkedIn
Facebook
SIGIR 2012
- Whole Page Optimization with Global Constraints, Video
Amazon
KDD 2019
- A Pareto-Efficient Algorithm for Multiple Objective Optimization in E-Commerce Recommendation
Alibaba
Rutgers University
Kwai Inc.
RecSys 2019
- Optimizing Multiple Objectives in Collaborative Filtering
UCL
RecSys 2010
- Multi-Criteria Service Recommendation Based on User Criteria Preferences
University of Manchester
RecSys 2011
- Multiple Objective Optimization in Recommender Systems
LinkedIn
RecSys 2012
- Pareto-Efficient Hybridization for Multi-Objective Recommender Systems
Universidade Federal de Minas Gerais
Zunnit Technologies
RecSys 2012
- TasteWeights: A Visual Interactive Hybrid Recommender System
RecSys 2012
- MPR: Multi-Objective Pairwise Ranking
George Mason University
SAP Labs
RecSys 2017
- User Preference Learning in Multi-criteria Recommendations using Stacked Auto Encoders
NIT Rourkela
RecSys 2018
- Portfolio Selections in P2P Lending: A Multi-Objective Perspective
USTC
University of Arizona
KDD 2016
- A Multi-Objective Learning to re-Rank Approach to Optimize Online Marketplaces for Multiple Stakeholders
Expedia
- Random Walk based Entity Ranking on Graph for Multidimensional Recommendation
Seoul National University
RecSys 2011
- User Effort vs. Accuracy in Rating-based Elicitation
RecSys 2012
- Movie Recommender System for Profit Maximization
RecSys 2013
- On Bias Problem in Relevance Feedback
Tsinghua University
University of California
CIKM 2011
- Towards an Effective and Unbiased Ranking of Scientific Literature through Mutual Reinforcement
CIKM 2012
- A Retrievability Analysis: Exploring the Relationship Between Retrieval Bias and Retrieval Performance
University of Glasgow
CIKM 2014
- Algorithmic Bias: Do Good Systems Make Relevant Documents More Retrievable?
University of Glasgow
University of Strathclyde
CIKM 2017
- Differentiable Unbiased Online Learning to Rank
University of Amsterdam
CIKM 2018
- Estimating Clickthrough Bias in the Cascade Model
Spotify
CIKM 2018
- Correcting for Recency Bias in Job Recommendation
RMIT University
University of Utah
GO1
CIKM 2019
- On Heavy-user Bias in A/B Testing
UC Berkeley
Microsoft
CIKM 2019
- Managing Popularity Bias in Recommender Systems with Personalized Re-ranking
University of Colorado
DePaul University
FLAIRS 2019
- A Methodology for Learning, Analyzing, and Mitigating Social Influence Bias in Recommender Systems
UC Berkeley
RecSys 2014
- On Over-Specialization and Concentration Bias of Recommendations: Probabilistic Neighborhood Selection in Collaborative Filtering Systems
NYU
RecSys 2014
- Controlling Popularity Bias in Learning to Rank Recommendation
DePaul University
RecSys 2017
- Modeling the Assimilation-Contrast Effects in Online Product Rating Systems: Debiasing and Recommendations
CUHK
RecSys 2017
- Sampling-Bias-Corrected Neural Modeling for Large Corpus Item Recommendations
Google
RecSys 2019
- Sample Selection Bias Correction Theory
Google
- Addressing Marketing Bias in Product Recommendations
Airbnb
UCSD
Twitter
WSDM 2020
- Representing and Recommending Shopping Baskets with Complementarity, Compatibility, and Loyalty, GitHub
Microsoft
UCSD
CIKM 2018
- Inferring Networks of Substitutable and Complementary Products, Video, Video
Pinterest
UCSD
Stanford
KDD 2015
- Quality-Aware Neural Complementary Item Recommendation, GitHub, Video
Texas A&M University
SIGIR 2015
- Complementary Recommendations at eBay: Tackling the Challenges of a Semi-Unstructured Marketplace, Blog
- Mining Frequent Patterns without Candidate Generation
Simon Fraser University
- Mining Frequent Itemsets through Progressive Sampling with Rademacher Averages
Two Sigma Investments
Brown University
KDD 2015
- Mining High Utility Itemsets without Candidate Generation
Wuhan University
Carleton University
CIKM 2012
- Improving Recommendation Accuracy using Networks of Substitutable and Complementary Products
The Chinese University of Hong Kong
UCSD
IJCNN 2017
- Modelling Complementary Products and Customer Preferences with Context Knowledge for Online Recommendation
Walmart Labs
KDD 2019
- Collaborative Sequence Prediction for Sequential Recommender
University of Chinese Academy of Sciences
CIKM 2017
- Domain Knowledge Based Personalized Recommendation Model and Its Application in Cross-selling
Chinese Academy of Sciences
University of Nebraska at Omaha
ICCS 2012
- Recommending Complementary Products in E-Commerce Push Notifications with a Mixture Model Approach
Alibaba
SIGIR 2017
- CRAFT: Complementary Recommendations Using Adversarial Feature Transformer
Amazon
- Knowledge-aware Complementary Product Representation Learning
Walmart Labs
WSDM 2020
- c+ GAN: Complementary Fashion Item Recommendation
Microsoft
KDD 2019
- Association Rules with Graph Patterns
VLDB 2015
- Cross-sell: A Fast Promotion-Tunable Customer-item Recommendation Method Based on Conditionally Independent Probabilities
Vignette Corporation
- A Fast Algorithm for Mining Utility-Frequent Itemsets
- Isolated items discarding strategy for discovering high utility itemsets
- Direct Candidates Generation: A Novel Algorithm for Discovering Complete Share-Frequent Itemsets
- Complementary-Similarity Learning using Quadruplet Network
Walmart Labs
- Inferring Substitutable Products with Deep Network Embedding
IJCAI 2019
- Item Recommendation on Monotonic Behavior Chains
UCSD
RecSys 2018
- Inferring Complementary Products from Baskets and Browsing
Yandex Market
RecSys 2018
- Personalized Bundle List Recommendation
Alibaba
WWW 2019
- Behavior Sequence Transformer for E-commerce Recommendation in Alibaba
Alibaba
- Temporal Recommendation on Graphs via Long- and Short-term Preference Fusion
IBM
KDD 2010
- Don’t Classify, Translate: Multi-Level E-Commerce Product Categorization Via Machine Translation, Video
NUS
Rakuten
- Generating and Personalizing Bundle Recommendations on Steam
UCSD
SIGIR 2017
- Context-Aware Recommender Systems
- Basket-Sensitive Personalized Item Recommendation
IJCAI 2017
- Factorizing Personalized Markov Chains for Next-Basket Recommendation
WWW2010
- Learning Hierarchical Representation Model for Next Basket Recommendation
SIGIR 2015
- Meta-Prod2Vec - Product Embeddings Using Side-Information for Recommendation
Criteo
Facebook
RecSys 2016
- Modeling Consumer Preferences and Price Sensitivities from Large-Scale Grocery Shopping Transaction Logs
Microsoft
UCSD
WWW 2017
- Personal Price Aware Multi-Seller Recommender System: Evidence from eBay
eBay
- How Algorithmic Confounding in Recommendation Systems Increases Homogeneity and Decreases Utility
Princeton
RecSys 2018
- Explore-Exploit in Top-N Recommender Systems via Gaussian Processes, Video
ETH
Microsoft
Google
RecSys 2014
- Isolation Forest
Monash University
Nanjing University
- Isolation-based Anomaly Detection - Isolation Forest - Long Paper
Monash University
Nanjing University
TKDD
- iNNE - Efficient Anomaly Detection by Isolation Using Nearest Neighbour Ensemble
Monash University
Federation University
ICDM-W
- LOF: Identifying Density-Based Local Outliers
University of Munich
University of British Columbia
SIGMOD 2000
- Which Anomaly Detector should I use?
Federation University
Osaka University
ICDM 2018
- PyOD: A Python Toolbox for Scalable Outlier Detection, GitHub
CMU
University of Toronto
Northeastern University Toronto
- SUOD: A Scalable Unsupervised Outlier Detection Framework, GitHub
CMU
IQVIA
University of Illinois
KDD 2020
- Liar Buyer Fraud, and How to Curb It
Zapfraud Inc.
NYU
UCSD
- Detecting organized eCommerce fraud using scalable categorical clustering
Aalto University
- A Pattern Based Anti-Fraud Method in C2C Ecommerce Environment
Beijing Institute of Technology
- Microsoft Uses Machine Learning and Optimization to Reduce E-Commerce Fraud
Microsoft
INFORMS
- Dual Sequential Variational Autoencoders for Fraud Detection
Univ. Lyon
Univ. St-Etienne
IDA 2020
- Fraud Detection for E-commerce Transactions by Employing a Prudential Multiple Consensus Model
University of Cagliari
- Adaptive Fraud Detection System Using Dynamic Risk
Virginia Tech
Microsoft
- Fraud detection system : A survey
Universiti Teknologi Malaysia
- Graph-based Anomaly Detection and Description: A Survey
Stony Brook University
City University of New York
CMU
- Temporal Sequence Learning and Data Reduction for Anomaly Detection
Purdue
- A Comprehensive Survey of Data Mining-based Fraud Detection Research
Monash University
Baycorp Advantage
- On Identifying Anomalies in Tor Usage with Applications in Detecting Internet Censorship
Oxford
- Temporal Anomaly Detection: Calibrating the Surprise
IBM
- Towards Detecting Anomalous User Behavior in Online Social Networks
AT&T Labs
Northeastern University
- Active Sampling for Entity Matching with Guarantees
Facebook
Microsoft
Stanford
Google
- iSampling: Framework for Developing Sampling Methods Considering User’s Interest
Pohang University of Science and Technology
CIKM 2012
- CGMOS: Certainty Guided Minority OverSampling
CIKM 2016
- Compression-Based Selective Sampling for Learning to Rank
Federal University of Minas Gerais
CIKM 2016
- A Personalised Ranking Framework with Multiple Sampling Criteria for Venue Recommendation
University of Glasgow
CIKM 2017
- Active Sampling for Large-scale Information Retrieval Evaluation
University of Amsterdam
CIKM 2017
- Adaptive Feature Sampling for Recommendation with Missing Content Feature Values
Tsinghua University
Rutgers University
CIKM 2019
- Efficiently Learning the Accuracy of Labeling Sources for Selective Sampling
CMU
KDD 2009
- Active Sampling for Entity Matching
Yahoo
Stanford
- Batch Mode Active Sampling based on Marginal Probability Distribution Matching
KDD 2012
- Selective Sampling on Graphs for Classification
IBM
KDD 2013
- Sampling for Big Data
University of Warwick
Texas A&M University
KDD 2014
- On Sampling Strategies for Neural Network-based Collaborative Filtering
University of California
Yahoo
Etsy Inc.
KDD 2017
- Sampling-Bias-Corrected Neural Modeling for Large Corpus Item Recommendations
Google
KDD 2019