Bayesian network

Bayesian network
= belief network
French\ \ réseau bayésien
German\ \ Bayessches Netzwerk
Dutch\ \ Bayesiaans netwerk
Italian\ \ rete bayesana
Spanish\ \ red bayesiana
Catalan\ \ xarxa bayesiana
Portuguese\ \ rede bayesiana; rede de credibilidade
Romanian\ \ -
Danish\ \ Bayesiansk netværk; tro netværk
Norwegian\ \ Bayesiansk nettverk; tro nettverk
Swedish\ \ Bayesianska nätverk, tro nätverk
Greek\ \ δίκτυο του Bayes
Finnish\ \ Bayes-verkko
Hungarian\ \ Bayes-hálózat; hit hálózat
Turkish\ \ Bayes ağı; inanç ağı
Estonian\ \ -
Lithuanian\ \ -
Slovenian\ \ Bayesian omrežja; prepričanja omrežje
Polish\ \ sieć bayesowska
Russian\ \ сеть Бейеса
Ukrainian\ \ -
Serbian\ \ Бајесовска мрежа
Icelandic\ \ Bayesian net; trú net
Euskara\ \ sare bayesiar
Farsi\ \ -
Persian-Farsi\ \ -
Arabic\ \ شبكات بيز
Afrikaans\ \ Bayes-netwerk; vermoedensnetwerk
Chinese\ \ -
Korean\ \ 베이지안 네트워크

Statistical terms. 2014.

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