Transferring Annotator- and Instance-dependent Transition Matrix for Learning from Crowds
Shikun Li, Xiaobo Xia, Jiankang Deng, Shiming Ge, Tongliang Liu

TL;DR
This paper proposes a deep learning approach to estimate complex, annotator- and instance-dependent noise transition matrices in crowdsourcing data, improving label noise modeling by knowledge transfer techniques.
Contribution
It introduces a neural network-based method to model general AIDTM and employs knowledge transfer among annotators to address data sparsity and complexity.
Findings
Outperforms existing methods on synthetic data
Achieves better label noise correction on real-world datasets
Demonstrates the effectiveness of knowledge transfer in modeling noise
Abstract
Learning from crowds describes that the annotations of training data are obtained with crowd-sourcing services. Multiple annotators each complete their own small part of the annotations, where labeling mistakes that depend on annotators occur frequently. Modeling the label-noise generation process by the noise transition matrix is a power tool to tackle the label noise. In real-world crowd-sourcing scenarios, noise transition matrices are both annotator- and instance-dependent. However, due to the high complexity of annotator- and instance-dependent transition matrices (AIDTM), annotation sparsity, which means each annotator only labels a little part of instances, makes modeling AIDTM very challenging. Prior works simplify the problem by assuming the transition matrix is instance-independent or using simple parametric ways, which lose modeling generality. Motivated by this, we target a…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Mobile Crowdsensing and Crowdsourcing · Music and Audio Processing
