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Multinomial distribution : ウィキペディア英語版
Multinomial distribution
(X_i) = n p_i (1-p_i)
\textstyle ^k p_i e^ \biggr)^n|
char = \left(\sum_^k p_je^\right)^n where i^2= -1|
pgf = \biggl( \sum_^k p_i z_i \biggr)^n\text(z_1,\ldots,z_k)\in\mathbb^k|
conjugate =Dirichlet: \mathrm(\alpha+\beta)|
}}
In probability theory, the multinomial distribution is a generalization of the binomial distribution. For ''n'' independent trials each of which leads to a success for exactly one of ''k'' categories, with each category having a given fixed success probability, the multinomial distribution gives the probability of any particular combination of numbers of successes for the various categories.
The binomial distribution is the probability distribution of the number of
successes for one of just two categories in ''n'' independent Bernoulli trials, with the same probability of success on each trial. In a multinomial distribution, the analog of the Bernoulli distribution is the categorical distribution, where each trial results in exactly one of some fixed finite number ''k'' possible outcomes, with probabilities ''p''1, ..., ''p''''k'' (so that ''p''''i'' ≥ 0 for ''i'' = 1, ..., ''k'' and \sum_^k p_i = 1), and there are ''n'' independent trials. Then if the random variables ''X''''i'' indicate the number of times outcome number ''i'' is observed over the ''n'' trials, the vector ''X'' = (''X''1, ..., ''X''''k'') follows a multinomial distribution with parameters ''n'' and p, where p = (''p''1, ..., ''p''''k''). While the trials are independent, their outcomes ''X'' are dependent because they must be summed to n.
Note that, in some fields, such as natural language processing, the categorical and multinomial distributions are conflated, and it is common to speak of a "multinomial distribution" when a categorical distribution is actually meant. This stems from the fact that it is sometimes convenient to express the outcome of a categorical distribution as a "1-of-K" vector (a vector with one element containing a 1 and all other elements containing a 0) rather than as an integer in the range 1 \dots K; in this form, a categorical distribution is equivalent to a multinomial distribution over a single trial.
==Specification==


抄文引用元・出典: フリー百科事典『 ウィキペディア(Wikipedia)
ウィキペディアで「Multinomial distribution」の詳細全文を読む



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