http://hdl.handle.net/1765/15
series: ERS-2000-06-LIS

Competitive exception learning using fuzzy frequency distributions


Research Paper
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A competitive exception learning algorithm for finding a non-linear mapping is proposed which puts the emphasis on the discovery of the important exceptions rather than the main rules. To do so,we first cluster the output space using a competitive fuzzy clustering algorithm and derive a fuzzy frequency distribution describing the general, average system's output behavior. Next, we look for a fuzzy partitioning of the input space in such away that the corresponding fuzzy output frequency distributions `deviate at most' from the average one as found in the first step. In this way, the most important `exceptional regions' in the input-output relation are determined. Using the joint input-output fuzzy frequency distributions, the complete input-output function as extracted from the data, can be expressed mathematically. In addition, the exceptions encountered can be collected and described as a set of fuzzy if-then-else-rules. Besides presenting a theoretical description of the new exception learning algorithm, we report on the outcomes of certain practical simulations.



Keywords


Classifications using Journal of Economic Literature (JEL) Classification System
Automatically Extracted Terms
  • cluster
  • value
  • output
  • exception
  • input
  • centroid
  • membership
  • series
  • space
  • distribution
  • algorithm
  • data point y
  • time series
  • output space
  • point
  • research
  • management
  • frequency
  • structure
  • mapping