The field of Weakly Supervised Learning (WSL) has recently seen a surge of popularity, with numerous papers addressing different types of "supervision deficiencies". In WSL use cases, a variety of situations exists where the collected "information" is imperfect. The paradigm of WSL attempts to list and cover these problems with associated solutions. In this paper, we review the research progress on WSL with the aim to make it as a brief introduction to this field. We present the three axis of WSL cube and an overview of most of all the elements of their facets. We propose three measurable quantities that acts as coordinates in the previously defined cube namely: Quality, Adaptability and Quantity of information. Thus we suggest that Biquality Learning framework can be defined as a plan of the WSL cube and propose to re-discover previously unrelated patches in WSL literature as a unified Biquality Learning literature.
翻译:微弱监督学习(WSL)领域最近出现了受欢迎程度的剧增,许多论文涉及不同类型的“监督缺陷”。在WSL使用案例中,收集到的“信息”并不完善,存在多种情况。WSL试图用相关解决方案列出并涵盖这些问题。在本文件中,我们审查了WSL的研究进展,目的是将WSL立方体的三个轴和其大部分方面要素的概览作为本领域的简要介绍。我们提出了三个可计量的数量,作为先前定义的立方体的坐标,即:质量、可调适性和信息数量。因此,我们建议将双质量学习框架界定为WSL立方体的一个计划,并提议重新发现WSL文献中以前无关的部分,作为统一的双语学习文献。