One option is to reshape your data so you have a column for every State-County combination. This allows you to construct an xts matrix :

```
require(reshape)
Opt1 <- as.data.frame(cast(Data, Date ~ county + State, value="Val"))
rownames(Opt1) <- Opt1$Date
Opt1$Date <- NULL
as.xts(Opt1)
```

Alternatively, you could work with a list of xts objects, each time making sure that you have the correct format as asked by xts. Same goes for any of the other timeseries packages. A possible solution would be :

```
Opt2 <-
with(Data,
by(Data,list(county,State,year),
function(x){
rownames(x) <- x$Date
x <- x["Val"]
as.xts(x)
}
)
)
```

Which would allow something like :

```
Opt2[["d","b","2012"]]
```

to select a specific time series. You can use all xts options on that. You can loop through the counties, states and years to construct plots like this one :

Code for plot :

```
counties <- dimnames(Opt2)[[1]]
states <- dimnames(Opt2)[[2]]
years <- dimnames(Opt2)[[3]]
op <- par(mfrow=c(3,6))
apply(
expand.grid(counties,states,years),1,
function(i){
plot(Opt2[[i[1],i[2],i[3]]],main=paste(i,collapse="-"))
invisible()
}
)
par(op)
```

Test-data :

```
Data <- data.frame( State = rep(letters[1:3],each=90),
county = rep(letters[4:6],90),
Date = rep(seq(as.Date("2011-01-01"),by="month",length.out=30),each=3),
Val = runif(270)
)
Data$year <- as.POSIXlt(Data$Date)$year + 1900
```

`year`

is a different year, you don't have a time series. If that's the case, then you're probably looking for a`data.frame`

. Is there a reason why you think this is a time series? – bill_080 May 2 '11 at 1:32