Ajdbeta(X, starts = list(shape1 = 1, shape2 = 1), leve = 0.95)
optim
optimizer is used to find the minimum of the negative log-likelihood. An approximate covariance matrix for the parameters is obtained by inverting the Hessian matrix at the optimum.
For more detail consulted mle
,confint
,AIC
.
R
has the [dqpr]beta
functions to evaluate the density, the quantiles, and the cumulative distribution or generate pseudo random numbers from the beta distribution.Ajdexp
Adjustment By Exponential Distribution,Ajdf
Adjustment By F Distribution,
Ajdgamma
Adjustment By Gamma Distribution,Ajdlognorm
Adjustment By Log Normal Distribution,
Ajdnorm
Adjustment By Normal Distribution,Ajdt
Adjustment By Student t Distribution,
Ajdweibull
Adjustment By Weibull Distribution,Ajdchisq
Adjustment By Chi-Squared Distribution.X <- rbeta(1000,shape1 = 1, shape2 = 3)
Ajdbeta(X, starts = list(shape1 = 1, shape2 = 1), leve = 0.95)
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