Fix typos (#936)
This commit is contained in:
		@@ -311,7 +311,7 @@ fruit <- c("apple", "banana")
 | 
				
			|||||||
parse_factor(c("apple", "banana", "bananana"), levels = fruit)
 | 
					parse_factor(c("apple", "banana", "bananana"), levels = fruit)
 | 
				
			||||||
```
 | 
					```
 | 
				
			||||||
 | 
					
 | 
				
			||||||
But if you have many problematic entries, it's often easier to leave as character vectors and then use the tools you'll learn about in [strings](#readr-strings) and [factors](#readr-factors) to clean them up.
 | 
					But if you have many problematic entries, it's often easier to leave them as character vectors and then use the tools you'll learn about in [strings](#readr-strings) and [factors](#readr-factors) to clean them up.
 | 
				
			||||||
 | 
					
 | 
				
			||||||
### Dates, date-times, and times {#readr-datetimes}
 | 
					### Dates, date-times, and times {#readr-datetimes}
 | 
				
			||||||
 | 
					
 | 
				
			||||||
 
 | 
				
			|||||||
@@ -690,7 +690,7 @@ names(who)
 | 
				
			|||||||
    2.  The next letter gives the sex of TB patients.
 | 
					    2.  The next letter gives the sex of TB patients.
 | 
				
			||||||
        The dataset groups cases by males (`m`) and females (`f`).
 | 
					        The dataset groups cases by males (`m`) and females (`f`).
 | 
				
			||||||
 | 
					
 | 
				
			||||||
    3.  The remaining numbers gives the age group.
 | 
					    3.  The remaining numbers give the age group.
 | 
				
			||||||
        The dataset groups cases into seven age groups:
 | 
					        The dataset groups cases into seven age groups:
 | 
				
			||||||
 | 
					
 | 
				
			||||||
        -   `014` = 0 -- 14 years old
 | 
					        -   `014` = 0 -- 14 years old
 | 
				
			||||||
 
 | 
				
			|||||||
@@ -23,7 +23,7 @@ library(tidyverse)
 | 
				
			|||||||
 | 
					
 | 
				
			||||||
If you want to learn more about factors, I recommend reading Amelia McNamara and Nicholas Horton's paper, [*Wrangling categorical data in R*](https://peerj.com/preprints/3163/).
 | 
					If you want to learn more about factors, I recommend reading Amelia McNamara and Nicholas Horton's paper, [*Wrangling categorical data in R*](https://peerj.com/preprints/3163/).
 | 
				
			||||||
This paper lays out some of the history discussed in [*stringsAsFactors: An unauthorized biography*](http://simplystatistics.org/2015/07/24/stringsasfactors-an-unauthorized-biography/) and [*stringsAsFactors = \<sigh\>*](http://notstatschat.tumblr.com/post/124987394001/stringsasfactors-sigh), and compares the tidy approaches to categorical data outlined in this book with base R methods.
 | 
					This paper lays out some of the history discussed in [*stringsAsFactors: An unauthorized biography*](http://simplystatistics.org/2015/07/24/stringsasfactors-an-unauthorized-biography/) and [*stringsAsFactors = \<sigh\>*](http://notstatschat.tumblr.com/post/124987394001/stringsasfactors-sigh), and compares the tidy approaches to categorical data outlined in this book with base R methods.
 | 
				
			||||||
An early version of the paper help motivate and scope the forcats package; thanks Amelia & Nick!
 | 
					An early version of the paper helped motivate and scope the forcats package; thanks Amelia & Nick!
 | 
				
			||||||
 | 
					
 | 
				
			||||||
## Creating factors
 | 
					## Creating factors
 | 
				
			||||||
 | 
					
 | 
				
			||||||
 
 | 
				
			|||||||
@@ -130,7 +130,7 @@ Notice you get back to where you left off: it's the same working directory and c
 | 
				
			|||||||
Because you followed my instructions above, you will, however, have a completely fresh environment, guaranteeing that you're starting with a clean slate.
 | 
					Because you followed my instructions above, you will, however, have a completely fresh environment, guaranteeing that you're starting with a clean slate.
 | 
				
			||||||
 | 
					
 | 
				
			||||||
In your favorite OS-specific way, search your computer for `diamonds.pdf` and you will find the PDF (no surprise) but *also the script that created it* (`diamonds.R`).
 | 
					In your favorite OS-specific way, search your computer for `diamonds.pdf` and you will find the PDF (no surprise) but *also the script that created it* (`diamonds.R`).
 | 
				
			||||||
This is huge win!
 | 
					This is a huge win!
 | 
				
			||||||
One day you will want to remake a figure or just understand where it came from.
 | 
					One day you will want to remake a figure or just understand where it came from.
 | 
				
			||||||
If you rigorously save figures to files **with R code** and never with the mouse or the clipboard, you will be able to reproduce old work with ease!
 | 
					If you rigorously save figures to files **with R code** and never with the mouse or the clipboard, you will be able to reproduce old work with ease!
 | 
				
			||||||
 | 
					
 | 
				
			||||||
 
 | 
				
			|||||||
		Reference in New Issue
	
	Block a user