So far, you've used a bunch of strings without learning much about the details.
Now it's time to dive into them, learning what makes strings tick, and mastering some of the powerful string manipulation tool you have at your disposal.
We'll begin with the details of creating strings and character vectors.
Next, we'll discuss the basics of regular expressions, a powerful tool for describing patterns in strings, then use those tools to extract data from strings.
The chapter finishes up with functions that work with individual letters, including a brief discussion of where your expectations from English might steer you wrong when working with other languages, and a few useful non-stringr functions.
Regular expression are a big topic, so we'll come back to them again in @sec-regular-expressions.
We'll also come back to strings again in @sec-programming-with-strings where we'll look at them from a programming perspective rather than a data analysis perspective.
Similar functionality is available in base R (through functions like `grepl()`, `gsub()`, and `regmatches()`) but we think you'll find stringr easier to use because it's been carefully designed to be as consistent as possible.
You can easily tell when you're using a stringr function because all stringr functions start with `str_`.
This is particularly useful if you use RStudio, because typing `str_` will trigger autocomplete, allowing you jog your memory of which functions are available.
Firstly, you can create a string using either single quotes (`'`) or double quotes (`"`).
There's no difference in behavior between the two so in the interests of consistency the [tidyverse style guide](https://style.tidyverse.org/syntax.html#character-vectors) recommends using `"`, unless the string contains multiple `"`.
Beware that the printed representation of a string is not the same as string itself, because the printed representation shows the escapes (in other words, when you print a string, you can copy and paste the output to recreate that string).
To see the raw contents of the string, use `str_view()`[^strings-1]:
To illustrate the problem, lets create a string that contains the contents of the code block where we define the `double_quote` and `single_quote` variables:
(This is sometimes called [leaning toothpick syndrome](https://en.wikipedia.org/wiki/Leaning_toothpick_syndrome).) To eliminate the escaping you can instead use a **raw string**[^strings-2]:
A raw string usually starts with `r"(` and finishes with `)"`.
But if your string contains `)"` you can instead use `r"[]"` or `r"{}"`, and if that's still not enough, you can insert any number of dashes to make the opening and closing pairs unique, e.g. `` `r"--()--" ``, `` `r"---()---" ``, etc. Raw strings are flexible enough to handle any text.
As well as `\"`, `\'`, and `\\` there are a handful of other special characters that may come in handy. The most common are `\n`, newline, and `\t`, tab. You'll also sometimes see strings containing Unicode escapes that start with `\u` or `\U`. This is a way of writing non-English characters that works on all systems. You can see the complete list of other special characters in `?'"'`.
Note that `str_view()` uses a blue background for tabs to make them easier to spot.
One of the challenges of working with text is that there's a variety of ways that white space can end up in text, so this background helps you recognize that something strange is going on.
We'll show you how to do this with `str_c()` and `str_glue()` and how you might use them with `mutate()`.
That naturally raises the question of what functions you might use with `summarise()`, so we'll finish this section with a discussion of `str_flatten()` which is a summary function for strings.
If you are mixing many fixed and variable strings with `str_c()`, you'll notice that you have to type `""` repeatedly, and this can make it hard to see the overall goal of the code.
An alternative approach is provided by the [glue package](https://glue.tidyverse.org) via `str_glue()`[^strings-4] .
If you guess that you'll need to somehow escape it, you're on the right track.
The trick is that glue uses a slightly different escaping technique; instead of prefixing with special character like `\`, you double up the special characters:
Regular expressions are a very concise language that describes patterns in strings.
For example, `"^The"` is shorthand for any string that starts with "The", and `a.+e` is a shorthand for "a" followed by one or more other characters, followed by an "e".
To learn about regexes, we'll start with the simplest function that uses them: `str_detect()`. It takes a character vector and a pattern, and returns a logical vector that says if the pattern was found at each element of the vector.
The following code shows the simplest type of pattern, an exact match.
We can also use `str_detect()` with `summarize()` by remembering that when you use a logical vector in a numeric context, `FALSE` becomes 0 and `TRUE` becomes 1.
That means `sum(str_detect(x, pattern))` tells you the number of observations that match and `mean(str_detect(x, pattern))` tells you the proportion of observations that match.
For example, the following snippet computes and visualizes the proportion of baby names that contain "x", broken down by year.
(Note that this gives us the proportion of names that contain an x; if you wanted the proportion of babies with a name containing an x, you'd need to perform a weighted mean.)
In general, any letter or number will match exactly, but punctuation characters like `.`, `+`, `*`, `[`, `]`, `?`, often have special meanings[^strings-8].
**Quantifiers** control how many times an element that can be applied to other pattern: `?` makes a pattern optional (i.e. it matches 0 or 1 times), `+` lets a pattern repeat (i.e. it matches at least once), and `*` lets a pattern be optional or repeat (i.e. it matches any number of times, including 0).
Regular expressions are very compact and use a lot of punctuation characters, so they can seem overwhelming at first, and you'll think a cat has walked across your keyboard.
So don't worry if they're hard to understand at first; you'll get better with practice.
Lets start that practice with some other useful stringr functions.
If you look closely, you'll notice that there's something off with our calculations: "Aaban" contains three "a"s, but our summary reports only two vowels.
- Use `str_to_lower()` to convert the names to lower case: `str_count(str_to_lower(name), "[aeiou]")`. We'll come back to this function in @sec-other-languages.
This is pretty typical when working with strings --- there are often multiple ways to reach your goal, either making your pattern more complicated or by doing some preprocessing on your string.
If you get stuck trying one approach, it can often be useful to switch gears and tackle the problem from a different perspective.
`str_remove_all()` is a short cut for `str_replace_all(x, pattern, "")` --- it removes matching patterns from a string.
Use in `mutate()`
Using pipe inside mutate.
Recommendation to make a function, and think about testing it --- don't need formal tests, but useful to build up a set of positive and negative test cases as you.
### Advanced replacements
You can also perform multiple replacements by supplying a named vector.
The details of the many ways other languages are different to English are too diverse to detail here, but we wanted to give a quick outline of the functions who's behavior differs based on your **locale**, the set of settings that vary from country to country.
If you don't already know the code for your language, [Wikipedia](https://en.wikipedia.org/wiki/List_of_ISO_639-1_codes) has a good list, and you can see which are supported with `stringi::stri_locale_list()`.
Base R string functions automatically use your locale current locale.
This means that string manipulation code works the way you expect when you're working with text in your native language, but it might work differently when you share it with someone who lives in another country.
To avoid this problem, stringr defaults to the "en" locale, and requires you to specify the `locale` argument to override it.
This also makes it easy to tell if a function might have different behavior in different locales.
- **Changing case**: while only relatively few languages have upper and lower case (Latin, Greek, and Cyrillic, plus a handful of lessor known languages).
Functions that work with the components of strings called **code points**.
Depending on the language involved, this might be a letter (like in most European languages), a syllable (like Japanese), or a logogram (like in Chinese).
It might be something more exotic like an accent, or a special symbol used to join two emoji together.
You could use this with `count()` to find the distribution of lengths of US babynames, and then with `filter()` to look at the longest names[^strings-11]:
Sometimes the reason you care about the length of a string is because you're trying to fit it into a label on a plot or in a table.
stringr provides two useful tools for cases where your string is too long:
- `str_trunc(x, 20)` ensures that no string is longer than 20 characters, replacing any thing too long with `…`.
- `str_wrap(x, 20)` wraps a string introducing new lines so that each line is at most 20 characters (it doesn't hyphenate, however, so any word longer than 20 characters will make a longer time)
```{r}
x <- "Lorem ipsum dolor sit amet, consectetur adipiscing elit, sed do eiusmod tempor incididunt ut labore et dolore magna aliqua. Ut enim ad minim veniam, quis nostrud exercitation ullamco laboris nisi ut aliquip ex ea commodo consequat."
1. Use `str_length()` and `str_sub()` to extract the middle letter from each baby name. What will you do if the string has an even number of characters?
2. Are there any major trends in the length of babynames over time? What about the popularity of first and last letters?
## Other functions
The are a bunch of other places you can use regular expressions outside of stringr.
- `matches()`: as you can tell from it's lack of `str_` prefix, this isn't a stringr fuction.
It's a "tidyselect" function, a fucntion that you can use anywhere in the tidyverse when selecting variables (e.g. `dplyr::select()`, `rename_with()`, `across()`, ...).
- `apropos()` searches all objects available from the global environment.
This is useful if you can't quite remember the name of the function.
```{r}
apropos("replace")
```
- `dir()` lists all the files in a directory.
The `pattern` argument takes a regular expression and only returns file names that match the pattern.
For example, you can find all the R Markdown files in the current directory with: