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# Dynamic time-series prediction and rollapply

I am trying to get a rolling prediction of a dynamic timeseries in R (and then work out squared errors of the forecast). I based a lot of this code on this StackOverflow question, but I am very new to R so I am struggling quite a bit. Any help would be much appreciated.

``````require(zoo)
require(dynlm)

set.seed(12345)
#create variables
x<-rnorm(mean=3,sd=2,100)
y<-rep(NA,100)
y[1]<-x[1]
for(i in 2:100) y[i]=1+x[i-1]+0.5*y[i-1]+rnorm(1,0,0.5)
int<-1:100
dummydata<-data.frame(int=int,x=x,y=y)

zoodata<-as.zoo(dummydata)

prediction<-function(series)
{
mod<-dynlm(formula = y ~ L(y) + L(x), data = series) #get model
nextOb<-nrow(series)+1
#make forecast
predicted<-coef(mod)[1]+coef(mod)[2]*zoodata\$y[nextOb-1]+coef(mod)[3]*zoodata\$x[nextOb-1]

#strip timeseries information
attributes(predicted)<-NULL

return(predicted)
}

rolling<-rollapply(zoodata,width=40,FUN=prediction,by.column=FALSE)
``````

This returns:

``````20          21      .....      80
10.18676  10.18676          10.18676
``````

Which has two problems I was not expecting:

1. Runs from 20->80, not 40->100 as I would expect (as the width is 40)
2. The forecasts it gives out are constant: 10.18676

What am I doing wrong? And is there an easier way to do the prediction than to write it all out? Thanks!

-

The main problem with your function is the `data` argument to `dynlm`. If you look in `?dynlm` you will see that the `data` argument must be a `data.frame` or a `zoo` object. Unfortunately, I just learned that `rollapply` splits your `zoo` objects into `array` objects. This means that `dynlm`, after noting that your `data` argument was not of the right form, searched for `x` and `y` in your global environment, which of course were defined at the top of your code. The solution is to convert `series` into a `zoo` object. There were a couple of other issues with your code, I post a corrected version here:

``````prediction<-function(series) {
mod <- dynlm(formula = y ~ L(y) + L(x), data = as.zoo(series)) # get model
# nextOb <- nrow(series)+1 # This will always be 21. I think you mean:
nextOb <- max(series[,'int'])+1 # To get the first row that follows the window
if (nextOb<=nrow(zoodata)) {   # You won't predict the last one
# make forecast
# predicted<-coef(mod)[1]+coef(mod)[2]*zoodata\$y[nextOb-1]+coef(mod)[3]*zoodata\$x[nextOb-1]
# That would work, but there is a very nice function called predict
predicted=predict(mod,newdata=data.frame(x=zoodata[nextOb,'x'],y=zoodata[nextOb,'y']))
# I'm not sure why you used nextOb-1
attributes(predicted)<-NULL
# I added the square error as well as the prediction.
c(predicted=predicted,square.res=(predicted-zoodata[nextOb,'y'])^2)
}
}

rollapply(zoodata,width=20,FUN=prediction,by.column=F,align='right')
``````

Your second question, about the numbering of your results, can be controlled by the `align` argument is `rollapply`. `left` would give you `1..60`, `center` (the default) would give you `20..80` and `right` gets you `40..100`.

-
Thank you so much! Works perfectly! – MatthewK Jul 21 '12 at 2:56