Skip to main content
Unpublished Paper
Collective Multi-Label Classification
Computer Science Department Faculty Publication Series
  • Nadia Ghamrawi, University of Massachusetts - Amherst
  • Andrew McCallum, University of Massachusetts - Amherst
Publication Date
2005
Abstract
Common approaches to multi-label classification learn independent classifiers for each category, and employ ranking or thresholding schemes for classification. Because they do not exploit dependencies between labels, such techniques are only well-suited to problems in which categories are independent. However, in many domains labels are highly interdependent. This paper explores multilabel conditional random field (CRF) classification models that directly parameterize label co-occurrences in multi-label classification. Experiments show that the models outperform their singlelabel counterparts on standard text corpora. Even when multilabels are sparse, the models improve subset classification error by as much as 40%.
Disciplines
Comments
This paper was harvested from CiteSeer
Citation Information
Nadia Ghamrawi and Andrew McCallum. "Collective Multi-Label Classification" (2005)
Available at: http://works.bepress.com/andrew_mccallum/6/