I would like to use the function ar() in R to fit an AR(p) process, but I am using it on an intraday timeseries and the data is not contiguous.

I tried to add NAs at the end of every day to force ar() to not compute the AR on the first p values, by typing this:

```
ar(c(rbind(ind_series, rep(NA,NCOL(ind_series)))))
```

But then R complains about the NAs:

```
Error in na.fail.default(as.ts(x)) : missing values in object
```

ar() has a na.action parameter but the documentation does not explain how to change it so that I have the behaviour I want. By default, it is set to na.fail().

ind_series is a matrix of 810 rows for every day and there are 39 days of observations (number of columns).

Anyone know how I can fit an AR taking in account the fact that the data is not contiguous ?

EDIT1: I started to use the function arima() which claims it can handle NAs, auto.arima is not available on Windows() because of Rcpp not being available as a package.

`ar(ind_series[-(1:p)])`

– Seth Jul 30 '12 at 19:32