Scientific Discovery using Genetic Programming   [SD] [GP]

by

Keijzer, M.

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Info: 1999
Keywords:genetic algorithms, genetic programming, data mining, scientific discovery
Abstract:
One of the greatest challenges facing organisations and individuals is how to turn their rapidly expanding data stores into accessible, and actionable knowledge (Fayyad et al, 1996). Knowledge Discovery [KD] in Databases (KDD) is concerned with extracting such useful information from data stores. We view data mining [DM] (DM) as a step in this larger process called the KDD process. In a DM step one can use genetic programming (GP) [GP] (Koza, 1992; Babovic 1996).
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BibTex:
@Misc{keijzer:1999:SDGP,
  author =       "Maarten Keijzer",
  title =        "Scientific Discovery using Genetic Programming",
  booktitle =    "GECCO-99 Student Workshop",
  year =         "1999",
  editor =       "Una-May O'Reilly",
  address =      "Orlando, Florida, USA",
  month =        "13 " # jul,
  keywords =     "genetic algorithms, genetic programming, data mining,
                 scientific discovery",
  URL =          "http://projects.dhi.dk/d2k/Publications/GPinSD.htm",
  abstract =     "One of the greatest challenges facing organisations
                 and individuals is how to turn their rapidly expanding
                 data stores into accessible, and actionable knowledge
                 (Fayyad et al, 1996). Knowledge Discovery in Databases
                 (KDD) is concerned with extracting such useful
                 information from data stores. We view data mining (DM)
                 as a step in this larger process called the KDD
                 process. In a DM step one can use genetic programming
                 (GP) (Koza, 1992; Babovic 1996).",
}