## Classification and Learning of Similarity Measures

- The background of this paper is the area of case-based reasoning. This is a reasoning technique where one tries to use the solution of some problem which has been solved earlier in order to obta in a solution of a given problem. As example of types of problems where this kind of reasoning occurs very often is the diagnosis of diseases or faults in technical systems. In abstract terms this reduces to a classification task. A difficulty arises when one has not just one solved problem but when there are very many. These are called "cases" and they are stored in the case-base. Then one has to select an appropriate case which means to find one which is "similar" to the actual problem. The notion of similarity has raised much interest in this context. We will first introduce a mathematical framework and define some basic concepts. Then we will study some abstract phenomena in this area and finally present some methods developed and realized in a system at the University of Kaiserslautern.

Author: | Michael M. Richter |
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URN (permanent link): | urn:nbn:de:hbz:386-kluedo-3023 |

Serie (Series number): | SEKI Report (92,18) |

Document Type: | Preprint |

Language of publication: | English |

Year of Completion: | 1999 |

Year of Publication: | 1999 |

Publishing Institute: | Technische Universität Kaiserslautern |

Date of the Publication (Server): | 2000/04/03 |

Tag: | similarity measure |

Faculties / Organisational entities: | Fachbereich Informatik |

DDC-Cassification: | 0 Allgemeines, Informatik, Informationswissenschaft / 004 Informatik |

Licence (German): | Standard gemäß KLUEDO-Leitlinien vor dem 27.05.2011 |