ESA: Example Sieve Approach for Multi-Positive and Unlabeled Learning
Li, Zhongnian, Wei, Meng, Ying, Peng, Xu, Xinzheng
–arXiv.org Artificial Intelligence
Learning from Multi-Positive and Unlabeled (MPU) data has gradually attracted significant attention from practical applications. Unfortunately, the risk of MPU also suffer from the shift of minimum risk, particularly when the models are very flexible as shown in Fig.\ref{moti}. In this paper, to alleviate the shifting of minimum risk problem, we propose an Example Sieve Approach (ESA) to select examples for training a multi-class classifier. Specifically, we sieve out some examples by utilizing the Certain Loss (CL) value of each example in the training stage and analyze the consistency of the proposed risk estimator. Besides, we show that the estimation error of proposed ESA obtains the optimal parametric convergence rate. Extensive experiments on various real-world datasets show the proposed approach outperforms previous methods.
arXiv.org Artificial Intelligence
Dec-3-2024
- Country:
- Oceania > Australia
- North America
- United States
- New York (0.04)
- District of Columbia > Washington (0.04)
- Louisiana > Orleans Parish
- New Orleans (0.04)
- California > Los Angeles County
- Long Beach (0.04)
- Canada
- Quebec
- Montreal (0.04)
- Capitale-Nationale Region
- Québec (0.04)
- Quebec City (0.04)
- British Columbia > Metro Vancouver Regional District
- Vancouver (0.14)
- Quebec
- United States
- Europe
- Italy (0.04)
- United Kingdom > England
- West Midlands > Birmingham (0.04)
- Cambridgeshire > Cambridge (0.04)
- Poland > Lesser Poland Province
- Kraków (0.04)
- Ireland > Leinster
- County Dublin > Dublin (0.04)
- Germany
- Lower Saxony > Hanover (0.06)
- Bavaria > Lower Franconia
- Würzburg (0.04)
- France
- Île-de-France > Paris
- Paris (0.04)
- Hauts-de-France > Nord
- Lille (0.04)
- Île-de-France > Paris
- Asia
- Genre:
- Research Report (1.00)
- Technology: