Learning Supervised Topic Models from Crowds

Authors

  • Filipe Rodrigues University of Coimbra
  • Bernardete Ribeiro University of Coimbra
  • Mariana Lourenço University of Coimbra
  • Francisco Pereira Massachusetts Institute of Technology

DOI:

https://doi.org/10.1609/hcomp.v3i1.13221

Keywords:

Topic models, Crowdsoucing, Multiple annotators, Supervised learning

Abstract

The growing need to analyze large collections of documents has led to great developments in topic modeling. Since documents are frequently associated with other related variables, such as labels or ratings, much interest has been placed on supervised topic models. However, the nature of most annotation tasks, prone to ambiguity and noise, often with high volumes of documents, deem learning under a single-annotator assumption unrealistic or unpractical for most real-world applications. In this paper, we propose a supervised topic model that accounts for the heterogeneity and biases among different annotators that are encountered in practice when learning from crowds. We develop an efficient stochastic variational inference algorithm that is able to scale to very large datasets, and we empirically demonstrate the advantages of the proposed model over state of the art approaches.

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Published

2015-09-23

How to Cite

Rodrigues, F., Ribeiro, B., Lourenço, M., & Pereira, F. (2015). Learning Supervised Topic Models from Crowds. Proceedings of the AAAI Conference on Human Computation and Crowdsourcing, 3(1), 160-168. https://doi.org/10.1609/hcomp.v3i1.13221