Make prediction from one model
reltest2_predict(model = "gev", xx, tt, n0, pp, params, case, nmethods)
Vector
which distribution to test. Possibles values are
"exp
",
"pareto_k1
",
"halfnorm
",
"norm
",
"lnorm
",
"gumbel
",
"frechet_k1
",
"weibull
",
"gev_k3
",
"logis
",
"lst_k3
",
"cauchy
",
"norm_p1
",
"lnorm_p1
",
"logis_p1
",
"lst_k3p1
",
"gumbel_p1
",
"norm_p12
",
"gev
",
"gpd
",
"gev_p1
".
training data
predictor vector
index for predictor vector
probabilities to predict
model parameters
the case number: different models have different lists of methods
the number of methods: different models have different numbers of methods