Robust Positive-Unlabeled Learning via Noise Negative Sample Self-correction

被引:2
|
作者
Zhu, Zhangchi [1 ,2 ]
Wang, Lu [2 ]
Zhao, Pu [2 ]
Du, Chao [2 ]
Zhang, Wei [1 ]
Dong, Hang [2 ]
Qiao, Bo [2 ]
Lin, Qingwei [2 ]
Rajmohan, Saravan [3 ]
Zhang, Dongmei [2 ]
机构
[1] East China Normal Univ, Shanghai, Peoples R China
[2] Microsoft Res, Beijing, Peoples R China
[3] Microsoft 365, Seattle, WA USA
来源
PROCEEDINGS OF THE 29TH ACM SIGKDD CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, KDD 2023 | 2023年
基金
中国国家自然科学基金;
关键词
positive-unlabeled learning; curriculum learning;
D O I
10.1145/3580305.3599491
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Learning from positive and unlabeled data is known as positive-unlabeled (PU) learning in literature and has attracted much attention in recent years. One common approach in PU learning is to sample a set of pseudo-negatives from the unlabeled data using ad-hoc thresholds so that conventional supervised methods can be applied with both positive and negative samples. Owing to the label uncertainty among the unlabeled data, errors of misclassifying unlabeled positive samples as negative samples inevitably appear and may even accumulate during the training processes. Those errors often lead to performance degradation and model instability. To mitigate the impact of label uncertainty and improve the robustness of learning with positive and unlabeled data, we propose a new robust PU learning method with a training strategy motivated by the nature of human learning: easy cases should be learned first. Similar intuition has been utilized in curriculum learning to only use easier cases in the early stage of training before introducing more complex cases. Specifically, we utilize a novel "hardness" measure to distinguish unlabeled samples with a high chance of being negative from unlabeled samples with large label noise. An iterative training strategy is then implemented to fine-tune the selection of negative samples during the training process in an iterative manner to include more "easy" samples in the early stage of training. Extensive experimental validations over a wide range of learning tasks show that this approach can effectively improve the accuracy and stability of learning with positive and unlabeled data. Our code is available at https://github.com/woriazzc/Robust-PU.
引用
收藏
页码:3663 / 3673
页数:11
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