u.pois.env | R Documentation |
This function outputs dimensions selected by Akaike information criterion (AIC), Bayesian information criterion (BIC) and likelihood ratio testing with specified significance level for the envelope model in poisson regression.
u.pois.env(X, Y, alpha = 0.01)
X |
Predictors. An n by p matrix, p is the number of predictors and n is number of observations. The predictors must be continuous variables. |
Y |
Response. An n by 1 matrix. The univariate response must be counts. |
alpha |
Significance level for testing. The default is 0.01. |
u.aic |
Dimension of the envelope subspace selected by AIC. |
u.bic |
Dimension of the envelope subspace selected by BIC. |
u.lrt |
Dimension of the envelope subspace selected by the likelihood ratio testing procedure. |
loglik.seq |
Log likelihood for dimension from 0 to p. |
aic.seq |
AIC value for dimension from 0 to p. |
bic.seq |
BIC value for dimension from 0 to p. |
data(horseshoecrab)
X1 <- as.numeric(horseshoecrab[ , 1] == 2)
X2 <- as.numeric(horseshoecrab[ , 1] == 3)
X3 <- as.numeric(horseshoecrab[ , 1] == 4)
X4 <- as.numeric(horseshoecrab[ , 2] == 2)
X5 <- as.numeric(horseshoecrab[ , 2] == 3)
X6 <- horseshoecrab[ , 3]
X7 <- horseshoecrab[ , 5]
X <- cbind(X1, X2, X3, X4, X5, X6, X7)
Y <- horseshoecrab[ , 4]
## Not run: u <- u.pois.env(X, Y)
## Not run: u
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