Here are two ways. The first way creates dimnames for the matrix about to be created and then strings out the data into a matrix, transposes it and converts it to data frame. The second way creates a by list consisting of year and month variables and uses tapply on that later converting to data frame and adding names.

```
# create test data
set.seed(123)
tt <- ts(rnorm(12*5, 17, 8), start=c(1981,1), frequency = 12)
```

**1) matrix**. This solution requires that we have whole consecutive years

```
dmn <- list(month.abb, unique(floor(time(tt))))
as.data.frame(t(matrix(tt, 12, dimnames = dmn)))
```

If we don't care about the nice names it is just `as.data.frame(t(matrix(tt, 12)))`

.

We could replace the `dmn<-`

line with the following simpler line using @thelatemail's comment:

```
dmn <- dimnames(.preformat.ts(tt))
```

**2) tapply**. A more general solution using `tapply`

is the following:

```
Month <- factor(cycle(tt), levels = 1:12, labels = month.abb)
tapply(tt, list(year = floor(time(tt)), month = Month), c)
```

**Note:** To invert this suppose `X`

is any of the solutions above. Then try:

```
ts(c(t(X)), start = 1981, freq = 12)
```

## Update

Improvement motivated by comments of @latemail below.

`boxplot(tt ~ cycle(tt))`

where`tt`

is your`"ts"`

series. The zoo package does have time series specific plotting. See`?plot.zoo`

and`?xyplot.zoo`

in that package. – G. Grothendieck Mar 19 '11 at 2:57`?monthplot`

. – G. Grothendieck Mar 19 '11 at 3:04