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NeuCrowd: Neural Sampling Network for Representation Learning with Crowdsourced Labels

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arxiv 2003.09660 v4 pith:QZB5BTPH submitted 2020-03-21 cs.LG cs.AIstat.ML

NeuCrowd: Neural Sampling Network for Representation Learning with Crowdsourced Labels

classification cs.LG cs.AIstat.ML
keywords labelscrowdsourceddataframeworklearningneucrowdrepresentationsampling
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Representation learning approaches require a massive amount of discriminative training data, which is unavailable in many scenarios, such as healthcare, smart city, education, etc. In practice, people refer to crowdsourcing to get annotated labels. However, due to issues like data privacy, budget limitation, shortage of domain-specific annotators, the number of crowdsourced labels is still very limited. Moreover, because of annotators' diverse expertise, crowdsourced labels are often inconsistent. Thus, directly applying existing supervised representation learning (SRL) algorithms may easily get the overfitting problem and yield suboptimal solutions. In this paper, we propose \emph{NeuCrowd}, a unified framework for SRL from crowdsourced labels. The proposed framework (1) creates a sufficient number of high-quality \emph{n}-tuplet training samples by utilizing safety-aware sampling and robust anchor generation; and (2) automatically learns a neural sampling network that adaptively learns to select effective samples for SRL networks. The proposed framework is evaluated on both one synthetic and three real-world data sets. The results show that our approach outperforms a wide range of state-of-the-art baselines in terms of prediction accuracy and AUC. To encourage reproducible results, we make our code publicly available at \url{https://github.com/tal-ai/NeuCrowd_KAIS2021}.

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