Predicts means and variances conditionally on the factors
predcond
simulates from the posterior predictive distribution
of the data, conditionally on realized values of the factors. This
has the advantage that the predictive density can be written as
the product of the marginals but introduces sampling uncertainty
that grows with the number of factors used.
predcond(x, ahead = 1, each = 1, ...)
x |
Object of class |
ahead |
Vector of timepoints, indicating how many steps to predict ahead. |
each |
Single integer (or coercible to such) indicating how often should be drawn from the posterior predictive distribution for each draw that has been stored during MCMC sampling. |
... |
Ignored. |
List of class fsvpredcond
containing two elements:
meansArray containing the draws of the predictive means.
varsArray containing the draws of the predictive variances.
Other predictors:
predcor()
,
predcov()
,
predh()
,
predloglikWB()
,
predloglik()
,
predprecWB()
set.seed(1) sim <- fsvsim(n = 500, series = 4, factors = 1) # simulate res <- fsvsample(sim$y, factors = 1) # estimate # Predict 1 day ahead: predobj <- predcond(res, each = 5) # Draw from the predictive distribution: preddraws <- matrix(rnorm(length(predobj$mean[,,1]), mean = predobj$mean[,,1], sd = predobj$vols[,,1]), nrow = 4) # Visualize the predictive distribution pairs(t(preddraws), col = rgb(0,0,0,.1), pch = 16)
Please choose more modern alternatives, such as Google Chrome or Mozilla Firefox.