Learning stable concepts in a changing world

  • Michael Harries
  • Kim Horn
Inducing Complex Representations
Part of the Lecture Notes in Computer Science book series (LNCS, volume 1359)


Concept drift due to hidden changes in context complicates learning in many domains including financial prediction, medical diagnosis, and network performance. Existing machine learning approaches to this problem use an incremental learning, on-line paradigm. Batch, off-line learners tend to be ineffective in domains with hidden changes in context as they assume that the training set is homogeneous.

We present an off-line method for identifying hidden context. This method uses an existing batch learner to identify likely context boundaries then performs a form of clustering called contextual clustering. The resulting data sets can then be used to produce context specific, locally stable concepts. The method is evaluated in a simple domain with hidden changes in context.


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Copyright information

© Springer-Verlag Berlin Heidelberg 1998

Authors and Affiliations

  • Michael Harries
    • 1
  • Kim Horn
    • 2
  1. 1.Department of Artificial Intelligence School of Computer Science and EngineeringUniversity of NSWAustralia
  2. 2.Predictive Strategies UnitAustralian Gilt Securities LimitedAustralia

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