人工智能
分类器(UML)
计算机科学
水准点(测量)
生成模型
生成语法
选择(遗传算法)
机器学习
模式识别(心理学)
功能(生物学)
选型
大地测量学
进化生物学
生物
地理
作者
Byeonghu Na,Hyemi Kim,Kyungwoo Song,Weonyoung Joo,Yoon-Yeong Kim,Il‐Chul Moon
标识
DOI:10.1145/3340531.3411971
摘要
Learning in the positive-unlabeled (PU) setting is prevalent in real world applications. Many previous works depend upon theSelected Completely At Random (SCAR) assumption to utilize unlabeled data, but the SCAR assumption is not often applicable to the real world due to selection bias in label observations. This paper is the first generative PU learning model without the SCAR assumption. Specifically, we derive the PU risk function without the SCAR assumption, and we generate a set of virtual PU examples to train the classifier. Although our PU risk function is more generalizable, the function requires PU instances that do not exist in the observations. Therefore, we introduce the VAE-PU, which is a variant of variational autoencoders to separate two latent variables that generate either features or observation indicators. The separated latent information enables the model to generate virtual PU instances. We test the VAE-PU on benchmark datasets with and without the SCAR assumption. The results indicate that the VAE-PU is superior when selection bias exists, and the VAE-PU is also competent under the SCAR assumption. The results also emphasize that the VAE-PU is effective when there are few positive-labeled instances due to modeling on selection bias.
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