- Papers \w code
- Overview
- Theoretical Comparisons of Positive-Unlabeled Learning against Positive-Negative Learning(2016)
- Learning from positive and unlabeled data: a survey(2018)
- Positive and unlabeled learning algorithms and applications: A survey(2019)
- Exploring Positive Unlabeled Machine Learning(2021)
- Positive Unlabeled Learning - Synthesis Lectures on AI and ML(2022)
- A recent survey on instance-dependent positive and unlabeled learning(2025)
- Cost-sensitive methods
- Learning Classifiers from Only Positive and Unlabeled Data(2008)[pulearn]
- Analysis of Learning from Positive and Unlabeled Data(2014)
- A Modified Logistic Regression for Positive and Unlabeled Learning(2019) [video]
- DEDPUL: Difference-of-Estimated-Densities-based Positive-Unlabeled Learning(2019)[source]
- PULSNAR: Positive Unlabeled Learning Selected Not At Random(2023)
- PUe: Biased Positive-Unlabeled Learning Enhancement by Causal Inference(2023)[source]
- Contrastive Approach to Prior Free Positive Unlabeled Learning(2024)
- Positive and Unlabeled Learning with Controlled Probability Boundary Fence(2024)
- A boosting framework for positive-unlabeled learning - AdaPU(2024)
- Class prior estimation for positive-unlabeled learning when label shift occurs(2025)
- Sample-selection/Two-step methods
- Positive-unlabeled learning for disease gene identification(2012)
- A bagging SVM to learn from positive and unlabeled examples(2013) [pulearn]
- Revisiting Sample Selection Approach to Positive-Unlabeled Learning: Turning Unlabeled Data into Positive rather than Negative(2019)
- Improving Positive Unlabeled Learning: Practical AUL Estimation and New Training Method for Extremely Imbalanced Data Sets(2020)
- PULNS: Positive-Unlabeled Learning with Effective Negative Sample Selector(2021)[slides]
- Positive-Unlabeled Learning by Latent Group-Aware Meta Disambiguation(2024)
- Deep Learning methods
- Positive-Unlabeled Learning with Non-Negative Risk Estimator - nnPU(2017)[source]
- Variational approach for learning from positive and unlabeled data - VPU(2020)[source]
- Improving Non-Negative Positive-Unlabeled Learning for News Headline Classification - FLPU(2023)
- Multiscale Positive-Unlabeled Framework for AI-Generated Text Detection - MPU(2024)
- Graph Neural Networks
- Learning Graph Neural Networks with Positive and Unlabeled Nodes - LSDAN(2021)
- PU-GNN: Polypharmacy Side-Effects Detection Based on Graph Neural Networks(2024)
- Bootstrap Latent Prototypes for graph positive-unlabeled learning(2024)
- Unraveling the impact of heterophilic structures on graph positive-unlabeled learning(2024)
- Graph neural networks for positive and unlabeled learning: a rewiring approach(2025)
- Anomaly Detection
- Overview
- Frameworks
- Python
nnPUlearning- Non-negative PU learning (Chainer)pulearn- Elkan & Noto, Bagging-based methodsdedpul- Density-based PU learningvpu- Variational PU learning (PyTorch)PUe- Causal Inference PU (NeurIPS 2023)pulse- Audio Signal Enhancement (ICASSP 2023 Best Paper)Active_PU_Learning- Class Prior Estimation in Active PUpu-learning- PyTorch implementation of nnPU/uPU
- Spark
- Python
- An introductory tutorial to the "Learning from Positive and Unlabeled Data" field.
- tinyML Talks Phoenix: Positive Unlabeled Learning for Tiny ML
- Semi-Supervised Classification of Unlabeled Data (PU Learning)
- Class prior and label frequency
- Cost-sensitive and sample-selection methods
- Inductive vs Transductive PU learning. a.k.a(?) (Single-training set vs case-control scenario)
- Labelling mechanism
- Assumptions
- Partial Seperability
- SCAR(Selected Completely At Random) - assumes all positive examples have equal probability of being labeled
- Non-SCAR / Instance-dependent labeling - labeling probability depends on instance features
- In healthcare: severe cases more likely to be diagnosed than mild ones
- In e-commerce: popular items more likely to receive reviews
- Examples far from decision boundary have higher labeling probability
- Instance-dependent PU learning survey(2025)
- Positive Unlabeled Learing, MegaFon, ODS.ai(2020)[RU]
- FedPU: Federated Learning with Positive and Unlabeled Data(2022)
- PULSE: Positive-Unlabelled Learning for audio Signal Enhancement(2023) - ICASSP 2023 Best Paper Award
- Fairness-Aware Online Positive-Unlabeled Learning(2024)
- Applications of PU and NU Learning in Cybersecurity(2024)
- Positive-Unlabeled Learning in Implicit Feedback Recommendation Systems(2025)