Sciweavers

KDD
2004
ACM

Collaborative Quality Filtering: Establishing Consensus or Recovering Ground Truth?

14 years 4 months ago
Collaborative Quality Filtering: Establishing Consensus or Recovering Ground Truth?
We present a algorithm based on factor analysis for performing collaborative quality filtering (CQF). Unlike previous approaches to CQF, which estimate the consensus opinion of a group of reviewers, our algorithm uses a generative model of the review process to estimate the latent intrinsic quality of the items under reviews. We run several tests that demonstrate that consensus and intrinsic quality are, in fact different and unrelated aspects of quality. These results suggest that asymptotic consensus, which purports to model peer review, is, in fact, not recovering the ground truth quality of reviewed items. Key Words: Collaborative Quality Filtering, Factor Analysis, Recommender Systems
Jonathan Traupman, Robert Wilensky
Added 02 Jul 2010
Updated 02 Jul 2010
Type Conference
Year 2004
Where KDD
Authors Jonathan Traupman, Robert Wilensky
Comments (0)