Poster
Streaming Bayesian Inference for Crowdsourced Classification
Edoardo Manino · Long Tran-Thanh · Nicholas Jennings
East Exhibition Hall B, C #186
Keywords: [ Classification ] [ Algorithms ] [ Variational Inference ] [ Algorithms -> Active Learning; Probabilistic Methods ]
A key challenge in crowdsourcing is inferring the ground truth from noisy and unreliable data. To do so, existing approaches rely on collecting redundant information from the crowd, and aggregating it with some probabilistic method. However, oftentimes such methods are computationally inefficient, are restricted to some specific settings, or lack theoretical guarantees. In this paper, we revisit the problem of binary classification from crowdsourced data. Specifically we propose Streaming Bayesian Inference for Crowdsourcing (SBIC), a new algorithm that does not suffer from any of these limitations. First, SBIC has low complexity and can be used in a real-time online setting. Second, SBIC has the same accuracy as the best state-of-the-art algorithms in all settings. Third, SBIC has provable asymptotic guarantees both in the online and offline settings.
Live content is unavailable. Log in and register to view live content