Bayesian Bias Mitigation for Crowdsourcing
Wauthier, Fabian L., Jordan, Michael I.
–Neural Information Processing Systems
Biased labelers are a systemic problem in crowdsourcing, and a comprehensive toolbox for handling their responses is still being developed. A typical crowdsourcing application can be divided into three steps: data collection, data curation, and learning. At present these steps are often treated separately. We present Bayesian Bias Mitigation for Crowdsourcing (BBMC), a Bayesian model to unify all three. Most data curation methods account for the {\it effects} of labeler bias by modeling all labels as coming from a single latent truth.
Neural Information Processing Systems
Feb-14-2020, 23:14:21 GMT