Learning From Crowdsourced Noisy Labels: A Signal Processing Perspective
Shahana Ibrahim, Panagiotis A. Traganitis, Xiao Fu, Georgios B. Giannakis

TL;DR
This paper reviews advances in learning from noisy crowdsourced labels, highlighting the role of signal processing theory in developing principled solutions and exploring emerging topics like reinforcement learning with human feedback.
Contribution
It connects signal processing concepts with crowdsourcing models, providing analytical insights and novel algorithmic approaches for handling noisy labels in AI/ML.
Findings
Signal processing techniques improve label noise mitigation.
Deep learning approaches enhance crowdsourcing data quality.
SP perspectives enable principled solutions to longstanding challenges.
Abstract
One of the primary catalysts fueling advances in artificial intelligence (AI) and machine learning (ML) is the availability of massive, curated datasets. A commonly used technique to curate such massive datasets is crowdsourcing, where data are dispatched to multiple annotators. The annotator-produced labels are then fused to serve downstream learning and inference tasks. This annotation process often creates noisy labels due to various reasons, such as the limited expertise, or unreliability of annotators, among others. Therefore, a core objective in crowdsourcing is to develop methods that effectively mitigate the negative impact of such label noise on learning tasks. This feature article introduces advances in learning from noisy crowdsourced labels. The focus is on key crowdsourcing models and their methodological treatments, from classical statistical models to recent deep…
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Taxonomy
TopicsAdvanced Statistical Process Monitoring · Music and Audio Processing · Advanced Statistical Methods and Models
MethodsFocus
