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・ Random dynamical system
・ Random early detection
・ Random effects model
・ Random element
・ Random Encounter
・ Random encounter
・ Random Encounter (band)
・ Random Encounter (film)
・ Random Encounters
・ Random End
・ Random energy model
・ Random EP (Number 1)
・ Random EP (Number 2)
・ Random Family
・ Random Fibonacci sequence
Random field
・ Random forest
・ Random function
・ Random Gender
・ Random geometric graph
・ Random glucose test
・ Random graph
・ Random group
・ Random Hacks of Kindness
・ Random Hand
・ Random Harvest
・ Random Harvest (film)
・ Random Hearts
・ Random Hearts (novel)
・ Random Hero


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Random field : ウィキペディア英語版
Random field
A random field is a generalization of a stochastic process such that the underlying parameter need no longer be a simple real or integer valued "time", but can instead take values that are multidimensional vectors, or points on some manifold.
At its most basic, discrete case, a random field is a list of random numbers whose indices are mapped into a space (of n dimensions). When used in the natural sciences, values in a random field are often spatially correlated in one way or another. In its most basic form this might mean that adjacent values (i.e. values with adjacent indices) do not differ as much as values that are further apart. This is an example of a covariance structure, many different types of which may be modeled in a random field. More generally, the values might be defined over a continuous domain, and the random field might be thought of as a "function valued" random variable.
== Definition and examples ==

Given a probability space (\Omega, \mathcal, P),
an ''X''-valued random field is a collection of ''X''-valued
random variables indexed by elements in a topological space ''T''. That is, a random field ''F'' is a collection
: \
where each F_t is an ''X''-valued random variable.
Several kinds of random fields exist, among them the Markov random field (MRF), Gibbs random field (GRF), conditional random field (CRF), and Gaussian random field. An MRF exhibits the Markovian property
: P(X_i=x_i|X_j=x_j, i\neq j) =P(X_i=x_i|\partial_i), \,
where \partial_i is a set of neighbours of the random variable ''X''''i''. In other words, the probability that a random variable assumes a value depends on the other random variables only through the ones that are its immediate neighbours. The probability of a random variable in an MRF is given by
: P(X_i=x_i|\partial_i) = \frac,
where Ω' is the same realization of Ω, except for random variable ''X''''i''. It is difficult to calculate with this equation, without recourse to the relation between MRFs and GRFs proposed by Julian Besag in 1974.

抄文引用元・出典: フリー百科事典『 ウィキペディア(Wikipedia)
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