Statistical approach to pattern recognition: Theory and practical solution by means of PREDITAS system

Pavel Pudil; Jana Novovičová; Svatopluk Bláha

Kybernetika (1991)

  • Volume: 27, Issue: Suppl, page (1)-76
  • ISSN: 0023-5954

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Pudil, Pavel, Novovičová, Jana, and Bláha, Svatopluk. "Statistical approach to pattern recognition: Theory and practical solution by means of PREDITAS system." Kybernetika 27.Suppl (1991): (1)-76. <http://eudml.org/doc/27644>.

@article{Pudil1991,
author = {Pudil, Pavel, Novovičová, Jana, Bláha, Svatopluk},
journal = {Kybernetika},
keywords = {statistical pattern classification; Bayes rule; linear classification; searching methods; feature selection},
language = {eng},
number = {Suppl},
pages = {(1)-76},
publisher = {Institute of Information Theory and Automation AS CR},
title = {Statistical approach to pattern recognition: Theory and practical solution by means of PREDITAS system},
url = {http://eudml.org/doc/27644},
volume = {27},
year = {1991},
}

TY - JOUR
AU - Pudil, Pavel
AU - Novovičová, Jana
AU - Bláha, Svatopluk
TI - Statistical approach to pattern recognition: Theory and practical solution by means of PREDITAS system
JO - Kybernetika
PY - 1991
PB - Institute of Information Theory and Automation AS CR
VL - 27
IS - Suppl
SP - (1)
EP - 76
LA - eng
KW - statistical pattern classification; Bayes rule; linear classification; searching methods; feature selection
UR - http://eudml.org/doc/27644
ER -

References

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