Title
Community-based bayesian aggregation models for crowdsourcing
Abstract
This paper addresses the problem of extracting accurate labels from crowdsourced datasets, a key challenge in crowdsourcing. Prior work has focused on modeling the reliability of individual workers, for instance, by way of confusion matrices, and using these latent traits to estimate the true labels more accurately. However, this strategy becomes ineffective when there are too few labels per worker to reliably estimate their quality. To mitigate this issue, we propose a novel community-based Bayesian label aggregation model, CommunityBCC, which assumes that crowd workers conform to a few different types, where each type represents a group of workers with similar confusion matrices. We assume that each worker belongs to a certain community, where the worker's confusion matrix is similar to (a perturbation of) the community's confusion matrix. Our model can then learn a set of key latent features: (i) the confusion matrix of each community, (ii) the community membership of each user, and (iii) the aggregated label of each item. We compare the performance of our model against established aggregation methods on a number of large-scale, real-world crowdsourcing datasets. Our experimental results show that our CommunityBCC model consistently outperforms state-of-the-art label aggregation methods, requiring, on average, 50% less data to pass the 90% accuracy mark.
Year
DOI
Venue
2014
10.1145/2566486.2567989
WWW
Keywords
Field
DocType
bayesian label aggregation model,accurate label,community-based bayesian aggregation model,community membership,crowd worker,confusion matrix,similar confusion matrix,established aggregation method,aggregated label,certain community,communitybcc model,bayesian inference,crowdsourcing
Data mining,Confusion,World Wide Web,Bayesian inference,Confusion matrix,Crowdsourcing,Computer science,Matrix (mathematics),Incentive engineering,Artificial intelligence,Machine learning,Bayesian probability
Conference
Citations 
PageRank 
References 
77
2.56
14
Authors
5
Name
Order
Citations
PageRank
Matteo Venanzi125116.27
John Guiver248221.48
Gabriella Kazai3115197.35
Pushmeet Kohli47398332.84
Milad Shokouhi5110950.63