If I understand the question correctly, you want to detect when the `h_no`

doesn't increase and then increment the `class`

. (I'm going to walk through how I solved this problem, there is a self-contained function at the end.)

## Working

We only care about the `h_no`

column for the moment, so we can extract that from the data frame:

```
> h_no <- data$h_no
```

We want to detect when `h_no`

doesn't go up, which we can do by working out when the difference between successive elements is either negative or zero. R provides the `diff`

function which gives us the vector of differences:

```
> d.h_no <- diff(h_no)
> d.h_no
[1] 1 1 1 -3 1 1 1 1 1 1 -6 1 1 1
```

Once we have that, it is a simple matter to find the ones that are non-positive:

```
> nonpos <- d.h_no <= 0
> nonpos
[1] FALSE FALSE FALSE TRUE FALSE FALSE FALSE FALSE FALSE FALSE TRUE FALSE
[13] FALSE FALSE
```

In R, `TRUE`

and `FALSE`

are basically the same as `1`

and `0`

, so if we get the cumulative sum of `nonpos`

, it will increase by 1 in (almost) the appropriate spots. The `cumsum`

function (which is basically the opposite of `diff`

) can do this.

```
> cumsum(nonpos)
[1] 0 0 0 1 1 1 1 1 1 1 2 2 2 2
```

But, there are two problems: the numbers are one too small; and, we are missing the first element (there should be four in the first class).

The first problem is simply solved: `1+cumsum(nonpos)`

. And the second just requires adding a `1`

to the front of the vector, since the first element is always in class `1`

:

```
> classes <- c(1, 1 + cumsum(nonpos))
> classes
[1] 1 1 1 1 2 2 2 2 2 2 2 3 3 3 3
```

Now, we can attach it back onto our data frame with `cbind`

(by using the `class=`

syntax, we can give the column the `class`

heading):

```
> data_w_classes <- cbind(data, class=classes)
```

And `data_w_classes`

now contains the result.

## Final result

We can compress the lines together and wrap it all up into a function to make it easier to use:

```
classify <- function(data) {
cbind(data, class=c(1, 1 + cumsum(diff(data$h_no) <= 0)))
}
```

Or, since it makes sense for the `class`

to be a factor:

```
classify <- function(data) {
cbind(data, class=factor(c(1, 1 + cumsum(diff(data$h_no) <= 0))))
}
```

You use either function like:

```
> classified <- classify(data) # doesn't overwrite data
> data <- classify(data) # data now has the "class" column
```

(This method of solving this problem is good because it avoids explicit iteration, which is generally recommend for R, and avoids generating lots of intermediate vectors and list etc. And also it's kinda neat how it can be written on one line :) )