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I am using the rugarch package and I fitted a model. Now I want to look at the output and use the plot function. My problem is, that the 5th plot contains some subplots, which are plotted in one device, but I want to plot each in a single device. How can I do this? As an example I give you a code example, which uses the sp500ret data of the package:

The code:

library(rugarch)
data(sp500ret)

somemodel<-ugarchspec(variance.model = list(model = "sGARCH", garchOrder = c(2, 2)), 
mean.model = list(armaOrder = c(1, 1), include.mean = TRUE), 
distribution.model = "ged")

somefit<-ugarchfit(spec=somemodel,data=sp500ret)

rollingesti = ugarchroll(somemodel, sp500ret, n.start=500,
 refit.every = 100, refit.window = 'moving', window.size = 500, 
  calculate.VaR = FALSE, keep.coef = TRUE)

plot(rollingesti,which=5)

the plot(rollingesti,which=5) plots several plots into one device, I want to isolate them.

edit: errors corrected and I also add the plot output, so you know what I mean:

ro

So I want to have them as single plots and bigger, now, they are too small, since they are all put into one output.

edit: Any help is still appreciated!

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Running your code I get the following error (at somemodel<-): ugarchspec-->error: the cond.distribution does not appear to be a valid choice.. Perhaps it is the version of r I am working with but to me the example is not reproducible... –  thijs van den bergh Jun 4 '13 at 17:39
    
Several errors in your code. distribution.model = "GED" should be distribution.model = "ged". And spmodel does not exist. –  P Lapointe Jun 4 '13 at 18:27
    
@thijsvandenbergh ok, sorry, I corrected the errors! Rugarch only works with R version >= 3.00. I also added the plot output. –  Stat Tistician Jun 4 '13 at 19:32
    
@PLapointe thanks for the hint! –  Stat Tistician Jun 4 '13 at 19:36
    
I am still searching for an answer, so any hint would be great! –  Stat Tistician Jun 5 '13 at 10:58

1 Answer 1

up vote 3 down vote accepted
+100

Your example does not work (at least for me), i.e. it does not converge. However, this one works:

library(rugarch)
data(sp500ret)
spec <- ugarchspec(distribution.model = "std")
mod <- ugarchroll(spec, data = sp500ret[1:2000,], n.ahead = 1, 
                 n.start = 1000,  refit.every = 100, refit.window = "moving", 
                 solver = "hybrid", fit.control = list(),
                 calculate.VaR = TRUE, VaR.alpha = c(0.01, 0.025, 0.05),
                 keep.coef = TRUE)

First, we find a method that is used in plot(mod, which = 5). It can be obtained by

getMethod("plot", c(x = "uGARCHroll", y = "missing"))

You are interested in the following lines

.intergarchrollPlot(x, choices = choices, plotFUN = paste(".plot.garchroll", 
            1:5, sep = "."), which = which, VaR.alpha = VaR.alpha, 
            density.support = density.support, ...)

where choices is "Fit Coefficients (with s.e. bands)". By inspecting rugarch:::.intergarchrollPlot we finally arrive to rugarch:::.plot.garchroll.5. These plots are not returned in any list or similar, hence I provide a bit modified version so that you could use them separately. Here I changed the first two and the last one line:

library(xts)
x <- mod
vmodel = x@model$spec@model$modeldesc$vmodel
if (!x@model$keep.coef) 
  stop("\n\nplot-->error: keep.coef set to FALSE in estimation\n")
coefs = x@model$coef
m = dim(coefs[[1]]$coef)[1]
N = length(coefs)
Z = matrix(NA, ncol = m, nrow = N)
Zup = matrix(NA, ncol = m, nrow = N)
Zdn = matrix(NA, ncol = m, nrow = N)
for (i in 1:m) {
  Z[, i] = sapply(coefs, FUN = function(y) y$coef[i, 1])
  Zup[, i] = Z[, i] + sapply(coefs, FUN = function(y) y$coef[i, 
                                                             2])
  Zdn[, i] = Z[, i] - sapply(coefs, FUN = function(y) y$coef[i, 
                                                             2])
}
dt = sapply(coefs, FUN = function(y) as.character(y$index))
cnames = rownames(coefs[[1]]$coef)
np = rugarch:::.divisortable(m) # added rugarch:::

This is a function for each plot separately, i is a number of the graph, e.g. from 1 to 7 in this case:

plotFun <- function(i){
  plot(xts(Z[, i], as.POSIXct(dt)), type = "l", 
       ylim = c(min(Zdn[, i]), max(Zup[, i])), ylab = "value", xlab = "", main = "", 
       minor.ticks = FALSE, ann = FALSE, auto.grid = FALSE)
  lines(xts(Zdn[, i], as.POSIXct(dt)), col = 2)
  lines(xts(Zup[, i], as.POSIXct(dt)), col = 2)
  title(cnames[i], line = 0.4, cex = 0.9)
  grid()
}

For example:

plotFun(1)
plotFun(2)
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thanks, I need time to check your code and to understand it. I will come back and ask further questions or accept your answer. –  Stat Tistician Jun 7 '13 at 17:08
    
thanks for your answer, I have now checked the code and it works. Therefore I will accept your answer. But one last question: I know, that I can get the values used to create the plot via the command coef(mod). These are the estimates and their used sd. errors. But how can I get isolated values of these outputs? E.g. coef(mod)[1] gives me the estimates of omega and so for one certain window. Now, I want to extract e.g. the estimate of omega for this timepoint (this window). I want to do this for all elemets of coef(mod) to get the isolated values with the corresponding date, –  Stat Tistician Jun 8 '13 at 5:40
    
so that I can recreate the plot by myself using plot(values,date) and so. How can I achieve this? –  Stat Tistician Jun 8 '13 at 5:41
    
and one minor thing about the plot itself, how can I get a more detailed y-axis? So more detailed ticks on the y-axis? –  Stat Tistician Jun 8 '13 at 5:51
    
@StatTistician, coef(mod) is a list of lists, so coef(mod)[[1]] returns the list of the first window. It has two elements: index and coef, so as I understand what you want is a matrix coef(mod)[[1]]$coef and particularly a column of estimates coef(mod)[[1]]$coef[, 1]. It seems that the answer to your question about ticks would not fit in the comment: it is a bit complicated since plot.xts itself draws axis(1, ... and axis(2, .... However, it seems that maximal number of ticks is used (at least in my example), have you tried to zoom the plot? Then there appear some more labels –  Julius Jun 8 '13 at 15:47

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