| mix_pdf-methods | R Documentation |
Gives conditional probability densities and distribution functions of mixture autoregressive models.
mix_pdf gives a probability density, mix_cdf a
distribution function. If argument x is supplied, the functions
are evaluated for the specified values of x, otherwise function
objects are returned and can be used for further computations, eg for
graphs.
mix_pdf and mix_cdf have methods with the following
signatures.
signature(model = "MixARGaussian", x = "missing", index = "missing", xcond = "numeric")Return (as a function of one argument) the conditional density
(respectively cdf), f(x|xcond), of X_{t+1} given
the past values xcond. The values in xcond are in
natural time order, e.g. the last value in xcond is
x_{t}. xcond must contain enough values for the
computation of the conditional density (cdf) but if more are given,
only the necessary ones are used.
signature(model = "MixARGaussian", x = "numeric", index = "missing", xcond = "numeric")Compute the conditional density (respectively cdf) at the values given
by x.
signature(model = "MixARGaussian", x = "numeric", index = "numeric", xcond = "missing")Compute conditional densities (respectively cdf) for times
specified in index. For each t\in{}index the
past values needed for the computation of the pdf (cdf) are
...,x[t-2],x[t-1].
signature(model = "MixARgen", x = "missing", index = "missing",
xcond = "numeric")signature(model = "MixARgen", x = "numeric", index = "missing",
xcond = "numeric")signature(model = "MixARgen", x = "numeric", index = "numeric",
xcond = "missing")Georgi N. Boshnakov
mix_moment for examples and computation of summary statistics of the
predictive distributions
mix_qf for computation of quantiles.
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