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arxiv: 1906.08776 · v1 · pith:KCPAH3QNnew · submitted 2019-06-20 · 💻 cs.HC · cs.LG· stat.ML

Latent Distribution Assumption for Unbiased and Consistent Consensus Modelling

classification 💻 cs.HC cs.LGstat.ML
keywords assumptionlabellatentobjectdistributionlabelsnoisytrue
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We study the problem of aggregation noisy labels. Usually, it is solved by proposing a stochastic model for the process of generating noisy labels and then estimating the model parameters using the observed noisy labels. A traditional assumption underlying previously introduced generative models is that each object has one latent true label. In contrast, we introduce a novel latent distribution assumption, implying that a unique true label for an object might not exist, but rather each object might have a specific distribution generating a latent subjective label each time the object is observed. Our experiments showed that the novel assumption is more suitable for difficult tasks, when there is an ambiguity in choosing a "true" label for certain objects.

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