Statistical approach to pattern recognition: Theory and practical solution by means of PREDITAS system
Kybernetika, Tome 27 (1991), pp. 1-76
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Pudil, Pavel; Novovičová, Jana; Bláha, Svatopluk. Statistical approach to pattern recognition: Theory and practical solution by means of PREDITAS system. Kybernetika, Tome 27 (1991), pp. 1-76. http://geodesic.mathdoc.fr/item/KYB_1991_27_Suppl_a0/

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