| RNGMIX-class | R Documentation |
"RNGMIX"Object of class RNGMIX.
Objects can be created by calls of the form new("RNGMIX", ...). Accessor methods for the slots are a.Dataset.name(x = NULL),
a.rseed(x = NULL), a.n(x = NULL), a.Theta(x = NULL), a.Dataset(x = NULL, pos = 0),
a.Zt(x = NULL), a.w(x = NULL), a.Variables(x = NULL), a.ymin(x = NULL) and a.ymax(x = NULL),
where x and pos stand for an object of class RNGMIX and a desired slot item, respectively.
Dataset.name:a character vector containing list names of data frames of size n \times d that d-dimensional datasets are written in.
rseed:set the random seed to any negative integer value to initialize the sequence. The first file in Dataset.name corresponds to it.
For each next file the random seed is decremented r_{\mathrm{seed}} = r_{\mathrm{seed}} - 1. The default value is -1.
n:a vector containing numbers of observations in classes n_{l}, where number of observations n = \sum_{l = 1}^{c} n_{l}.
Theta:a list containing c parametric family types pdfl. One of "normal", "lognormal", "Weibull", "gamma", "Gumbel", "binomial", "Poisson", "Dirac", "uniform" or circular "vonMises" defined for 0 \leq y_{i} \leq 2 \pi.
Component parameters theta1.l follow the parametric family types. One of \mu_{il} for normal, lognormal, Gumbel and von Mises distributions, \theta_{il} for Weibull, gamma, binomial, Poisson and Dirac distributions and a for uniform distribution.
Component parameters theta2.l follow theta1.l. One of \sigma_{il} for normal, lognormal and Gumbel distributions, \beta_{il} for Weibull and gamma distributions, p_{il} for binomial distribution, \kappa_{il} for von Mises distribution and b for uniform distribution.
Component parameters theta3.l follow theta2.l. One of \xi_{il} \in \{-1, 1\} for Gumbel distribution.
Dataset:a list of length n_{\mathrm{D}} of data frames of size n \times d containing d-dimensional datasets. Each of the d columns represents one random variable. Numbers of observations n equal the number of rows
in the datasets.
Zt:a factor of true cluster membership.
w:a vector of length c containing component weights w_{l} summing to 1.
Variables:a character vector containing types of variables. One of "continuous" or "discrete".
ymin:a vector of length d containing minimum observations.
ymax:a vector of length d containing maximum observations.
Marko Nagode
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.