Moderately supervised learning: definition, framework and generality

被引:0
作者
Yongquan Yang
机构
[1] Sichuan University,Institute of Clinical Pathology, West China Hospital
来源
Artificial Intelligence Review | / 57卷
关键词
Learning with simple annotations; Supervised learning; Weakly supervised learning;
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学科分类号
摘要
Learning with supervision has achieved remarkable success in numerous artificial intelligence (AI) applications. In the current literature, by referring to the properties of the labels prepared for the training dataset, learning with supervision is categorized as supervised learning (SL) and weakly supervised learning (WSL). SL concerns the situation where the training dataset is assigned with ideal (complete, exact and accurate) labels, while WSL concerns the situation where the training dataset is assigned with non-ideal (incomplete, inexact or inaccurate) labels. However, various solutions for SL tasks under the era of deep learning have shown that the given labels are not always easy to learn, and the transformation from the given labels to easy-to-learn targets can significantly affect the performance of the final SL solutions. Without considering the properties of the transformation from the given labels to easy-to-learn targets, the definition of SL conceals some details that can be critical to building the appropriate solutions for specific SL tasks. Thus, for practitioners in various AI application fields, it is desirable to reveal these details systematically. This article attempts to achieve this goal by expanding the categorization of SL and investigating the sub-type that plays the central role in SL. More specifically, taking into consideration the properties of the transformation from the given labels to easy-to-learn targets, we firstly categorize SL into three narrower sub-types. Then we focus on the moderately supervised learning (MSL) sub-type that concerns the situation where the given labels are ideal, but due to the simplicity in annotation, careful designs are required to transform the given labels into easy-to-learn targets. From the perspectives of the definition, framework and generality, we conceptualize MSL to present a complete fundamental basis to systematically analyse MSL tasks. At meantime, revealing the relation between the conceptualization of MSL and the mathematicians’ vision, this article as well establishes a tutorial for AI application practitioners to refer to viewing a problem to be solved from the mathematicians’ vision.
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[1]  
Badrinarayanan V(2017)SegNet: a deep Convolutional Encoder-Decoder Architecture for Image Segmentation IEEE Trans Pattern Anal Mach Intell 39 2481-2495
[2]  
Kendall A(2017)Improving object detection with one line of Code Navaneeth Proc IEEE Int Conf Comput Vis 40 834-848
[3]  
Cipolla R(2019)OpenPose: Realtime Multi-person 2D pose estimation using Part Affinity fields IEEE Trans Pattern Anal Mach Intell 12 2121-2159
[4]  
Bodla N(2018)DeepLab: semantic image segmentation with Deep Convolutional nets, atrous Convolution, and fully connected CRFs IEEE Trans Pattern Anal Mach Intell 521 436-444
[5]  
Singh B(2019)CenterNet: keypoint triplets for object detection Proc IEEE Int Conf Comput Vis 8 124-651
[6]  
Chellappa R(2011)Adaptive subgradient methods for online learning and stochastic optimization J Mach Learn Res 39 640-732
[7]  
Davis LS(2019)U-Net: deep learning for cell counting, detection, and morphometry Nat Methods 32 722-254
[8]  
Cao Z(2010)A review of multi-instance learning assumptions Knowl Eng Rev 44 245-7303
[9]  
Hidalgo Martinez G(2014)Classification in the presence of label noise: a survey IEEE Trans Neural Networks Learn Syst 77 7283-2309
[10]  
Simon T(2019)Understanding deep learning techniques for image segmentation ACM-CSUR 78 2269-18799