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I am trying to input the order of arma model from auto.arima function into garchFit function.

I have a df calles datatsr.

I extract the order of AR term in this way:

auto.arima(datatsr[,1])$arma[1] :
[1] 4

And order of MA term:

auto.arima(datatsr[,1])$arma[2] :
[1] 3

Hence, I have arma(4,3)

I then try to input those values in garchFit formula and forecast one step ahead values from my embeded list (59 days are used to forecast day number 60) called mmk below :

Garchfore <- function(datatsr, mmk) {
library(fGarch)
windowsL <- split(t(mmk), rep(1:nrow(mmk), each=ncol(mmk)))  
names(windowsL) <- unlist(lapply(windowsL,
                 function(x) paste(rownames(datatsr)[range(x)], sep="",   collapse=" - ")))
one<-lapply(windowsL, function(x) 
predict(garchFit(formula = ~arma(auto.arima(datatsr[,1])$arma[1],auto.arima(datatsr[,1])$arma[2])
                 +garch(1,1), data = datatsr[rev(unlist(x)),1]),
        n.ahead=1))
}

When I then call the function

predi=Garchfore(datatsr,mmk)

I get the error:

Error in predict(garchFit(formula = ~arma(auto.arima(datatsr[, 1])$arma[1],  : 
error in evaluating the argument 'object' in selecting a method for function 'predict':
Error in    .garchArgsParser(formula = formula, data = data, trace = FALSE) : 
Formula and data units do not match.

Does anyway has an idea about what I am doing wrong? Or is it even possible to pass auto.arima to garchFit as I try, or not?

Best regards!

share|improve this question
    
Does someone know?:) –  user1665355 Sep 28 '12 at 13:27
    
have you tried it without the auto.arima ? try using the regular arma with the p,q you got and try to narrow down the problem. –  haki Apr 21 '13 at 17:15
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1 Answer

up vote 0 down vote accepted

1. The way you specify the formula is wrong

2. you should input the arima order manually

let me try to explain using my own data

garchFit(formula= ~arma(3,2) + aparch(1,1), data=ret.fin.chn)

yield result

Title:
 GARCH Modelling 

Call:
 garchFit(formula = ~arma(3, 2) + aparch(1, 1), data = ret.fin.chn) 

Mean and Variance Equation:
 data ~ arma(3, 2) + aparch(1, 1)
<environment: 0x0df1f498>
 [data = ret.fin.chn]

Conditional Distribution:
 norm 

Coefficient(s):
     mu          ar1          ar2          ar3          ma1          ma2        omega       alpha1  
 1.4860e-04   6.3611e-01  -6.1945e-01   1.9331e-02  -6.6944e-01   6.4677e-01   1.0186e-05   3.1339e-02  
     gamma1        beta1        delta  
 3.6329e-04   9.7088e-01   1.4759e+00  

Std. Errors:
 based on Hessian 

Error Analysis:
         Estimate  Std. Error  t value Pr(>|t|)    
mu      1.486e-04   2.893e-04    0.514 0.607512    
ar1     6.361e-01   3.752e-01    1.695 0.090028 .  
ar2    -6.195e-01   1.872e-01   -3.310 0.000934 ***
ar3     1.933e-02   3.307e-02    0.585 0.558851    
ma1    -6.694e-01   3.754e-01   -1.783 0.074552 .  
ma2     6.468e-01   2.066e-01    3.130 0.001748 ** 
omega   1.019e-05   3.645e-06    2.794 0.005202 ** 
alpha1  3.134e-02   5.490e-03    5.708 1.14e-08 ***
gamma1  3.633e-04   6.787e-02    0.005 0.995729    
beta1   9.709e-01   4.663e-03  208.212  < 2e-16 ***
delta   1.476e+00   3.241e-01    4.554 5.26e-06 ***
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

Log Likelihood:
 7311.694    normalized:  2.659765 

Description:
 Wed Oct 16 23:43:41 2013 by user: ASUS 

while

> garchFit(formula= ~arma(arima.ret.fin.chn$arma[1],arima.ret.fin.chn$arma[2]) + aparch(1,1), data=ret.fin.chn)

yield result

[1] "arima.ret.fin.chn" "arma"              "data"             
[1] "data"
Error in .garchArgsParser(formula = formula, data = data, trace = FALSE) : 
  Formula and data units do not match.

now let see

> arima.ret.fin.chn$arma[1]

[1] 3

> arima.ret.fin.chn$arma[2]
[1] 2

> class(arima.ret.fin.chn$arma[1])

[1] "integer"

> class(3)

[1] "numeric"

while

b<-as.numeric(3)
c<-as.numeric(2)
> garchFit(formula=~garch(b,c),data=ret.fin.chn)
[1] "b"    "c"    "data"
[1] "data"

get the hang of it yet ?

my suggestion is that you write directly the value of arima order

try to check the garch fit code by

> garchFit

function (formula = ~garch(1, 1), data = dem2gbp, init.rec = c("mci", 
"uev"), delta = 2, skew = 1, shape = 4, cond.dist = c("norm", 
"snorm", "ged", "sged", "std", "sstd", "snig", "QMLE"), include.mean = TRUE, 
include.delta = NULL, include.skew = NULL, include.shape = NULL, 
leverage = NULL, trace = TRUE, algorithm = c("nlminb", "lbfgsb", 
    "nlminb+nm", "lbfgsb+nm"), hessian = c("ropt", "rcd"), 
control = list(), title = NULL, description = NULL, ...) 
{
DEBUG = FALSE
init.rec = match.arg(init.rec)
cond.dist = match.arg(cond.dist)
hessian = match.arg(hessian)
algorithm = match.arg(algorithm)
CALL = match.call()
Name = capture.output(substitute(data))
if (is.character(data)) {
    eval(parse(text = paste("data(", data, ")")))
    data = eval(parse(text = data))
}
data <- as.data.frame(data)
if (isUnivariate(data)) {
    colnames(data) <- "data"
}
else {
    uniqueNames = unique(sort(colnames(data)))
    if (is.null(colnames(data))) {
        stop("Column names of data are missing.")
    }
    if (length(colnames(data)) != length(uniqueNames)) {
        stop("Column names of data are not unique.")
    }
}
if (length(formula) == 3 && isUnivariate(data)) 
    formula[2] <- NULL
if (length(formula) == 2) {
    if (isUnivariate(data)) {
        formula = as.formula(paste("data", paste(formula, 
            collapse = " ")))
    }
    else {
        stop("Multivariate data inputs require lhs for the formula.")
    }
}
robust.cvar <- (cond.dist == "QMLE")
args = .garchArgsParser(formula = formula, data = data, trace = FALSE)
if (DEBUG) 
    print(list(formula.mean = args$formula.mean, formula.var = args$formula.var, 
        series = args$series, init.rec = init.rec, delta = delta, 
        skew = skew, shape = shape, cond.dist = cond.dist, 
        include.mean = include.mean, include.delta = include.delta, 
        include.skew = include.skew, include.shape = include.shape, 
        leverage = leverage, trace = trace, algorithm = algorithm, 
        hessian = hessian, robust.cvar = robust.cvar, control = control, 
        title = title, description = description))
ans = .garchFit(formula.mean = args$formula.mean, formula.var = args$formula.var, 
    series = args$series, init.rec, delta, skew, shape, cond.dist, 
    include.mean, include.delta, include.skew, include.shape, 
    leverage, trace, algorithm, hessian, robust.cvar, control, 
    title, description, ...)
ans@call = CALL
attr(formula, "data") <- paste("data = ", Name, sep = "")
ans@formula = formula
ans
}
share|improve this answer
    
Thanks! Yes I could put it manually, but it is not what I really want... But I accepted your answer! –  user1665355 Oct 18 '13 at 7:14
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