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tidyverse_dplyr_apply.Rmd
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tidyverse_dplyr_apply.Rmd
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# dplyr进阶 {#tidyverse-dplyr-apply}
```{r, include=FALSE}
knitr::opts_chunk$set(
echo = TRUE,
warning = FALSE,
message = FALSE,
fig.showtext = TRUE
)
```
本章主要关注dplyr的一些应用。
## 导入数据
今天讲一个关于企鹅的数据故事。
```{r message = FALSE, warning = FALSE}
library(tidyverse)
library(palmerpenguins)
penguins <- penguins %>% drop_na()
```
## 变量含义
|variable |class |description |
|:-----------------|:---------|:-----------|
|species |character | 企鹅种类 (Adelie, Gentoo, Chinstrap) |
|island |character | 所在岛屿 (Biscoe, Dream, Torgersen) |
|bill_length_mm |double | 嘴峰长度 (单位毫米) |
|bill_depth_mm |double | 嘴峰深度 (单位毫米)|
|flipper_length_mm |integer | 鰭肢长度 (单位毫米) |
|body_mass_g |integer | 体重 (单位克) |
|sex |character | 性别 |
|year |integer | 记录年份 |
```{r out.width = '86%', echo = FALSE}
knitr::include_graphics("images/culmen_depth.png")
```
## 简单回顾
### 选择"bill_"开始的列
```{r, eval=FALSE}
penguins %>% select(bill_length_mm, bill_depth_mm)
```
```{r}
penguins %>% select(starts_with("bill_"))
```
### 选择"_mm"结尾的列
```{r, eval=FALSE}
penguins %>% select(bill_length_mm, bill_depth_mm, flipper_length_mm)
```
```{r}
penguins %>% select(ends_with("_mm"))
```
### 选择含有"length"的列
```{r, eval=FALSE}
penguins %>% select(bill_length_mm, flipper_length_mm)
```
```{r}
penguins %>% select(contains("length"))
```
### 选择数值型的列
```{r}
penguins %>% select(where(is.numeric))
```
### 选择字符串类型的列
```{r}
penguins %>% select(where(is.character))
```
### 选择字符串类型以外的列
```{r}
penguins %>% select(!where(is.character))
```
### 可以用多种组合来选择
```{r}
penguins %>% select(species, starts_with("bill_"))
```
### 返回向量还是数据框
对应数据框`my_tibble`, 注意返回向量还是数据框的区别
- 返回向量
```{r, eval = FALSE}
my_tibble[["x"]]
my_tibble$x
my_tibble %>%
pull(x)
```
- 返回数据框
```{r, eval = FALSE}
my_tibble["x"]
my_tibble %>%
select(x)
```
### 选择全部为0的列
```{r}
tb <- tibble(
x = c(1, 2, 3, 4, 5),
y = 0,
z = c(-1, -2, 0, 2, 1),
w = c(0, 1, 2, 3, 4)
)
tb
myfun <- function(x) all(x == 0)
tb %>%
select(where(myfun))
# or
tb %>%
select(where(~all(.x == 0))) # 找出选择全部为0的列
tb %>%
select(where(~sum(.x) == 0)) # 找出这一列元素之和为0的列
tb %>%
select(where(~any(.x == 0))) # 找出这一列元素含有0的列
```
**课堂练习**:剔除全部为NA的列或者全部为NA的行
```{r}
df <- tibble(
x = c(NA, NA, NA),
y = c(2, 3, NA),
z = c(NA, 5, NA)
)
# columns
df %>%
select(where(~ !all(is.na(.x))))
# rows
df %>%
filter(
if_any(everything(), ~ !is.na(.x))
)
```
### 寻找男企鹅
函数 `filter()` 中的逻辑运算符
Operator | Meaning
----------|--------
`==` | Equal to
`>` | Greater than
`<` | Less than
`>=` | Greater than or equal to
`<=` | Less than or equal to
`!=` | Not equal to
`%in%` | in
`is.na` | is a missing value (NA)
`!is.na` | is not a missing value
`&` | and
`|` | or
```{r}
penguins %>% filter(sex == "male")
```
```{r}
penguins %>% filter(species %in% c("Adelie", "Gentoo"))
```
```{r}
penguins %>%
filter(species == "Adelie" & bill_length_mm > 40)
penguins %>%
filter(species == "Adelie", bill_length_mm > 40)
```
**课堂练习**,说出以下代码的含义
```{r, eval=FALSE}
penguins %>%
filter(species == "Adelie", bill_length_mm == max(bill_length_mm) )
```
## 更多应用
希望介绍一个技术,对应一个应用场景
### 弱水三千,只取一瓢
```{r}
penguins %>%
head()
penguins %>%
tail()
```
```{r}
penguins %>%
slice(1)
```
```{r}
penguins %>%
group_by(species) %>%
slice(1)
```
### 嘴峰长度最大那一行
三种方法
```{r}
penguins %>%
filter(bill_length_mm == max(bill_length_mm) )
```
```{r}
penguins %>%
arrange(desc(bill_length_mm)) %>%
slice(1)
```
```{r}
penguins %>%
slice_max(bill_length_mm)
```
### separate
```{r}
tb <- tibble::tribble(
~day, ~price,
1, "30-45",
2, "40-95",
3, "89-65",
4, "45-63",
5, "52-42"
)
```
```{r}
tb1 <- tb %>%
separate(price, into = c("low", "high"), sep = "-")
tb1
```
### unite
```{r}
tb1 %>%
unite(col = "price", c(low, high), sep = ":", remove = FALSE)
```
### distinct
`distinct()`处理的对象是data.frame;功能是**筛选不重复的row**;返回data.frame
```{r}
df <- tibble::tribble(
~x, ~y, ~z,
1, 1, 1,
1, 1, 2,
1, 1, 1,
2, 1, 2,
2, 2, 3,
3, 3, 1
)
df
```
```{r}
df %>%
distinct()
```
```{r}
df %>%
distinct(x)
df %>%
distinct(x, y)
```
```{r}
df %>%
distinct(x, y, .keep_all = TRUE) # 只保留最先出现的row
```
```{r, eval=FALSE}
df %>%
distinct(
across(c(x, y)),
.keep_all = TRUE
)
```
```{r}
df %>%
group_by(x) %>%
distinct(y, .keep_all = TRUE)
```
`n_distinct()`处理的对象是vector;功能是**统计不同的元素有多少个**;返回一个数值
```{r}
c(1, 1, 1, 2, 2, 1, 3, 3) %>% n_distinct()
```
```{r}
df$z %>% n_distinct()
```
```{r}
df %>%
group_by(x) %>%
summarise(
n = n_distinct(z)
)
```
### 有关NA的计算
`NA`很讨厌,凡是它参与的四则运算,结果都是`NA`,
```{r}
sum(c(1, 2, NA, 4))
```
所以需要事先把它删除,增加参数说明 `na.rm = TRUE`
```{r}
sum(c(1, 2, NA, 4), na.rm = TRUE)
```
```{r}
mean(c(1, 2, NA, 4), na.rm = TRUE)
```
### 寻找企鹅中的胖子
```{r}
penguins %>%
mutate(
body = if_else(body_mass_g > 4200, "you are fat", "you are fine")
)
```
**随堂练习**:用考试成绩的均值代替缺失值
```{r}
df <- tibble::tribble(
~name, ~type, ~score,
"Alice", "english", 80,
"Alice", "math", NA,
"Bob", "english", 70,
"Bob", "math", 69,
"Carol", "english", NA,
"Carol", "math", 90
)
df
```
```{r}
df %>%
group_by(type) %>%
mutate(mean_score = mean(score, na.rm = TRUE)) %>%
mutate(newscore = if_else(is.na(score), mean_score, score))
```
### 给企鹅身材分类
```{r}
penguins %>%
mutate(
body = case_when(
body_mass_g < 3500 ~ "best",
body_mass_g >= 3500 & body_mass_g < 4500 ~ "good",
body_mass_g >= 4500 & body_mass_g < 5500 ~ "general",
TRUE ~ "other"
)
)
```
**随堂练习**:按嘴峰长度分成A, B, C, D 4个等级
```{r}
penguins %>%
mutate(
degree = case_when(
bill_length_mm < 35 ~ "A",
bill_length_mm >= 35 & bill_length_mm < 45 ~ "B",
bill_length_mm >= 45 & bill_length_mm < 55 ~ "C",
TRUE ~ "D"
)
)
```
### 每种类型企鹅有多少只?
知识点:`n()`函数,统计当前分组数据框的行数
```{r}
penguins %>%
summarise(
n = n()
)
```
```{r}
penguins %>%
group_by(species) %>%
summarise(
n = n()
)
```
统计某个变量中**各组**出现的次数,可以使用`count()`函数
```{r}
penguins %>% count(species)
```
不同性别的企鹅各有多少
```{r}
penguins %>% count(sex, sort = TRUE)
```
可以统计不同组合出现的次数
```{r}
penguins %>% count(island, species)
```
可以在`count()`里构建新变量,并利用这个新变量完成统计。
比如,统计嘴巴长度大于40的企鹅个数
- 常规做法
```{r}
penguins %>%
filter(bill_length_mm > 40) %>%
summarise(
n = n()
)
```
- `count()`做法
```{r}
penguins %>% count(longer_bill = bill_length_mm > 40)
```
解析思路:`bill_length_mm > 40` 比较算符 返回逻辑型向量,向量里面只有TRUR和FALSE两种值,因此上面的代码相当于统计TRUE有多少个,FALSE有多少个?
### 强制转换
矢量中的元素必须是相同的类型,但如果不一样呢,会发生什么?
这个时候R会**强制转换**成相同的类型。这就涉及数据类型的转换层级
- character > numeric > logical
- double > integer
比如这里会强制转换成字符串类型
```{r}
c("foo", 1, TRUE)
```
这里会强制转换成数值型
```{r}
c(1, TRUE, FALSE)
```
```{r}
c(TRUE, TRUE, FALSE) %>% sum()
```
**随堂练习**:补全下面代码,求嘴峰长度大于40mm的占比?
```{r}
penguins %>%
mutate(is_bigger40 = bill_length_mm > 40)
```
```{r, eval=FALSE, echo=FALSE}
penguins %>%
mutate(is_bigger40 = bill_length_mm > 40) %>%
summarise(
peop = sum(is_bigger40) / n()
)
```
## across()之美
我们想知道,嘴巴长度和厚度的均值
```{r}
penguins %>%
summarize(
length = mean(bill_length_mm)
)
```
接着添加下个变量
```{r}
penguins %>%
summarize(
length = mean(bill_length_mm),
depth = mean(bill_length_mm)
)
```
长度和厚度惊人的相等。我是不是发现新大陆了?
### across()函数
更安全、更简练的写法,王老师的最爱
```{r}
penguins %>%
summarize(
across(c(bill_depth_mm, bill_length_mm), mean)
)
```
翅膀的长度加进去看看
```{r}
penguins %>%
summarize(
across(c(bill_depth_mm, bill_length_mm, flipper_length_mm), mean)
)
```
还可以更简练喔
```{r}
penguins %>%
summarize(
across(ends_with("_mm"), mean)
)
```
::: {.rmdnote}
`across()`函数用法
```{r, eval = FALSE}
across(.cols = everything(), .fns = NULL, ..., .names = NULL)
```
- 用在 `mutate()` 和`summarise()` 函数里面
- `across()` 对**多列**执行**相同**的函数操作,返回**数据框**
:::
### 数据中心化
```{r}
penguins %>%
mutate(
bill_length_mm = bill_length_mm - mean(bill_length_mm),
bill_depth_mm = bill_depth_mm - mean(bill_depth_mm)
)
```
更清晰的办法
```{r}
centralized <- function(x) {
x - mean(x)
}
penguins %>%
mutate(
across(c(bill_length_mm, bill_depth_mm), centralized)
)
```
### 数据标准化
```{r}
std <- function(x) {
(x - mean(x, na.rm = TRUE)) / sd(x, na.rm = TRUE)
}
penguins %>%
mutate(
across(c(bill_length_mm, bill_depth_mm), std)
)
```
或者使用更简洁的方法
```{r}
# using across() and purrr style
penguins %>%
summarise(
across(starts_with("bill_"), ~ (.x - mean(.x)) / sd(.x))
)
```
### 多列多个统计函数
```{r}
penguins %>%
group_by(species) %>%
summarise(
across(ends_with("_mm"), list(mean = mean, sd = sd), na.rm = TRUE)
)
```
**随堂练习**:以sex分组,对"bill_"开头的列,求出每列的最大值和最小值
```{r}
penguins %>%
group_by(sex) %>%
summarise(
across(starts_with("bill_"), list(max = max, min = min), na.rm = TRUE)
)
```
在第 \@ref(tidyverse-beauty-of-across1) 章到第 \@ref(tidyverse-beauty-of-across4) 章会继续讲王老师的最爱`across()`函数。