An integral formula for Heaviside neural networks

نویسندگان

  • Paul C. Kainen
  • Věra Kůrková
چکیده

A connection is investigated between integral formulas and neural networks based on the Heaviside function. The integral formula developed by Kůrková, Kainen and Kreinovich is derived in a new way for odd dimensions and extended to even dimensions. In particular, it is shown that well-behaved functions of d variables can be represented by integral combinations of Heavisides with weights depending on higher derivatives.

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تاریخ انتشار 2004