For now, I'm just using something like this:

```
test_data$level <- rep("", nrow(test_data))
test_data[test_data$value <= 1, ]$level <- "1"
test_data[test_data$value > 1 & test_data$value <= 2, ]$level <- "2"
...
test_data[test_data$value > 4 & test_data$value <= 5, ]$level <- "5"
```

Just wondering if there's a better way to do this in R, or a way to simply apply some `scale`

argument via `ggplot2`

to do the categorizing.

There could be a couple of approaches to this, so it was hard to phrase my question exactly. Here's the gist... I have data something like so:

```
set.seed(123)
test_data <- data.frame(var1 = rep(LETTERS[1:3], each = 5),
var2 = rep(letters[1:5], 3),
value = runif(30, 1, 5))
test_data
var1 value
1 A 2.150310
2 B 4.153221
3 C 2.635908
4 D 4.532070
5 E 4.761869
6 F 1.182226
7 G 3.112422
8 H 4.569676
9 I 3.205740
10 J 2.826459
```

I have a lot more data points, and am plotting something like this:

```
library(ggplot2)
p <- ggplot(test_data, aes(x = var1, y = var2, colour = value))
p <- p + geom_jitter(position = position_jitter(width = 0.1, heigh = 0.1))
p
```

Which gives something like so:

My actual data is from a subjective evaluation with 1-5 ratings, but I've bundled similar questions together and averaged them together so they're no longer integers.

I'm plotting the ratings per factor combination to visualize which combinations yielded higher ratings. The default continuous scale doesn't really "pop" and I'd like to get the color scale to treat "bins" of these values (0-1, 1-2, ... 4-5) to be colored like `scale_colour_discrete`

does for factors.

So, my question(s):

1) Is it possible with ggplot2 to "bin" these somehow via `scale_colour_continuous`

so I can get the default factor level coloring scheme to apply even though this is continuous data?

2) If not, is there an easier way to create a new vector where I substitute numbers/letters for my values based on criteria? I'm a bit of an R novice, so I wasn't sure except a bunch of `if()`

or conditional statements (`test_data[test_data > 0 & test_data < 1, "values"] <- "a"`

or something like that).