articleJun 1, 2012Closed access

Large scale metric learning from equivalence constraints

Graz University of Technology

Indexed incrossref

Abstract

In this paper, we raise important issues on scalability and the required degree of supervision of existing Mahalanobis metric learning methods. Often rather tedious optimization procedures are applied that become computationally intractable on a large scale. Further, if one considers the constantly growing amount of data it is often infeasible to specify fully supervised labels for all data points. Instead, it is easier to specify labels in form of equivalence constraints. We introduce a simple though effective strategy to learn a distance metric from equivalence constraints, based on a statistical inference perspective. In contrast to existing methods we do not rely on complex optimization problems requiring…

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1,712
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Authors

5

Topics & keywords

Keywords
  • Computer science
  • Metric (unit)
  • Mahalanobis distance
  • Inference
  • Equivalence (formal languages)
  • Scalability
  • Disjoint sets
  • Machine learning
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