Functional radial basis function networks

نویسندگان

  • Nicolas Delannay
  • Fabrice Rossi
  • Brieuc Conan-Guez
  • Michel Verleysen
چکیده

There has been recently a lot of interest for functional data analysis [1] and extensions of well-known methods to functional inputs (clustering algorithm [2], non-parametric models [3], MLP [4]). The main motivation of these methods is to benefit from the enforced inner structure of the data. This paper presents how functional data can be used with RBFN, and how the inner structure of the former can help designing the network.

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تاریخ انتشار 2004