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Compute bootstrap standard error for the simultaneous envelope estimator.
boot.stenv(X, Y, q, u, B)
The output is an p by r matrix.
The standard error for elements in beta computed by bootstrap.
Predictors. An n by p matrix, p is the number of predictors. The predictors can be univariate or multivariate, discrete or continuous.
Multivariate responses. An n by r matrix, r is the number of responses and n is number of observations. The responses must be continuous variables.
Dimension of the X-envelope. An integer between 0 and p.
Dimension of the Y-envelope. An integer between 0 and r.
Number of bootstrap samples. A positive integer.
This function computes the bootstrap standard errors for the regression coefficients in the envelope model by bootstrapping the residuals.
data(fiberpaper) X <- fiberpaper[, 5:7] Y <- fiberpaper[, 1:4] u <- u.stenv(X, Y) u if (FALSE) B <- 100 if (FALSE) bootse <- boot.stenv(X, Y, 2, 3, B) if (FALSE) bootse
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