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| | Radio Journalist Carmouche from Sainte-Catherine, has many hobbies that include interior design, [http://www.pierrecardinhali.de/?option=com_k2&view=itemlist&task=user&id=98664 property search singapore] developers in singapore and tombstone rubbing. Last year very recently completed a journey Historic Centre of Ceský Krumlov. |
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| In [[statistics]], the '''conditional probability table (CPT)''' is defined for a set of discrete (not independent) [[random variable]]s to demonstrate [[marginal probability]] of a single variable with respect to the others. For example, assume there are three random variables <math>x_1,x_2, x_3</math> where each have <math>K</math> states. Then, the conditional probability table of <math>x_1</math> provides the marginal probability values for <math>P(x_1\mid x_2,x_3)</math>. Clearly, this table has ''K''<sup>3</sup> cells. In general, for <math>M</math> number of variables <math>x_1,x_2,\ldots,x_M</math> with <math>K</math> states, the CPT has size ''K''<sup>''M''</sup>.<ref name=murphybook>{{cite book|last=Murphy|first=KP|title=Machine learning: a probabilistic perspective|year=2012|publisher=The MIT Press}}</ref>
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| CPT table can be put into a matrix form. For example, the values of <math>P(x_j\mid x_i)=T_{ij}</math> create a matrix. This matrix is [[stochastic matrix]] since its row sum is equals to 1; i.e. <math>\sum_j T_{ij}</math>.
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| ==References==
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| {{Reflist}}
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| {{Statistics-stub}}
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| [[Category:Probability theory]]
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| [[Category:Conditionals]]
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Latest revision as of 07:21, 18 August 2014
Radio Journalist Carmouche from Sainte-Catherine, has many hobbies that include interior design, property search singapore developers in singapore and tombstone rubbing. Last year very recently completed a journey Historic Centre of Ceský Krumlov.