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学习小组day6笔记--清南北南

学习小组day6笔记--清南北南

作者: 清南北南 | 来源:发表于2022-05-13 17:06 被阅读0次

    今天学习R包实操,以dplyr为例

    思维导图: R包dplyr的应用
    实操部分
    1. 安装和加载R包,准备示例数据
    #设置镜像、安装加载
    options("repos" = c(CRAN="https://mirrors.tuna.tsinghua.edu.cn/CRAN/")) 
    options(BioC_mirror="https://mirrors.ustc.edu.cn/bioc/") 
    install.packages("dplyr")
    library(dplyr)
    #使用内置数据集iris的简化版作为示例数据
    test <- iris[c(1:2,51:52,101:102),]
    test
        Sepal.Length Sepal.Width Petal.Length Petal.Width    Species
    1            5.1         3.5          1.4         0.2     setosa
    2            4.9         3.0          1.4         0.2     setosa
    51           7.0         3.2          4.7         1.4 versicolor
    52           6.4         3.2          4.5         1.5 versicolor
    101          6.3         3.3          6.0         2.5  virginica
    102          5.8         2.7          5.1         1.9  virginica
    
    1. 练习dplyr五个基础函数
    # 1. mutate(), 新增列
    mutate(test, new = Sepal.Length * Sepal.Width)
        Sepal.Length Sepal.Width Petal.Length Petal.Width    Species   new
    1            5.1         3.5          1.4         0.2     setosa 17.85
    2            4.9         3.0          1.4         0.2     setosa 14.70
    51           7.0         3.2          4.7         1.4 versicolor 22.40
    52           6.4         3.2          4.5         1.5 versicolor 20.48
    101          6.3         3.3          6.0         2.5  virginica 20.79
    102          5.8         2.7          5.1         1.9  virginica 15.66
    # 2. select(), 按列筛选
    select(test,c(1,5))
        Sepal.Length    Species
    1            5.1     setosa
    2            4.9     setosa
    51           7.0 versicolor
    52           6.4 versicolor
    101          6.3  virginica
    102          5.8  virginica
    select(test,1)
        Sepal.Length
    1            5.1
    2            4.9
    51           7.0
    52           6.4
    101          6.3
    102          5.8
    select(test,Sepal.Length)
        Sepal.Length
    1            5.1
    2            4.9
    51           7.0
    52           6.4
    101          6.3
    102          5.8
    select(test, vars)
    Note: Using an external vector in selections is ambiguous.
    i Use `all_of(vars)` instead of `vars` to silence this message.
    i See <https://tidyselect.r-lib.org/reference/faq-external-vector.html>.
    This message is displayed once per session.
        Petal.Length Petal.Width
    1            1.4         0.2
    2            1.4         0.2
    51           4.7         1.4
    52           4.5         1.5
    101          6.0         2.5
    102          5.1         1.9
    select(test, one_of(vars))
        Petal.Length Petal.Width
    1            1.4         0.2
    2            1.4         0.2
    51           4.7         1.4
    52           4.5         1.5
    101          6.0         2.5
    102          5.1         1.9
    

    补充说明:
    all_of(): Matches variable names in a character vector. All names must be present, otherwise an out-of-bounds error is thrown.
    any_of(): Same asall_of() , except that no error is thrown for names that don't exist.
    one_of(c("foo", "bar")): Selects "foo" first.

    # 3. filter(), 按行筛选
    filter(test, Species == "setosa")
      Sepal.Length Sepal.Width Petal.Length Petal.Width Species
    1          5.1         3.5          1.4         0.2  setosa
    2          4.9         3.0          1.4         0.2  setosa
    
    filter(test,Species == "setosa" & Sepal.Length > 5)
      Sepal.Length Sepal.Width Petal.Length Petal.Width Species
    1          5.1         3.5          1.4         0.2  setosa
    
    filter(test,Species %in% c("setosa","versicolor"))
      Sepal.Length Sepal.Width Petal.Length Petal.Width    Species
    1          5.1         3.5          1.4         0.2     setosa
    2          4.9         3.0          1.4         0.2     setosa
    3          7.0         3.2          4.7         1.4 versicolor
    4          6.4         3.2          4.5         1.5 versicolor
    
    #4. arrange(), 按某1列或某几列对整个表格进行排序
    arrange(test, Sepal.Length)#从小到大排序
      Sepal.Length Sepal.Width Petal.Length Petal.Width    Species
    1          4.9         3.0          1.4         0.2     setosa
    2          5.1         3.5          1.4         0.2     setosa
    3          5.8         2.7          5.1         1.9  virginica
    4          6.3         3.3          6.0         2.5  virginica
    5          6.4         3.2          4.5         1.5 versicolor
    6          7.0         3.2          4.7         1.4 versicolor
    
    arrange(test, desc(Sepal.Length))#用desc从大到小
      Sepal.Length Sepal.Width Petal.Length Petal.Width    Species
    1          7.0         3.2          4.7         1.4 versicolor
    2          6.4         3.2          4.5         1.5 versicolor
    3          6.3         3.3          6.0         2.5  virginica
    4          5.8         2.7          5.1         1.9  virginica
    5          5.1         3.5          1.4         0.2     setosa
    6          4.9         3.0          1.4         0.2     setosa
    # 5.summarise(),汇总
    summarise(test, mean(Sepal.Length),sd(Sepal.Length)) #计算Sepal.Length的平均值和标准差
      mean(Sepal.Length) sd(Sepal.Length)
    1           5.916667        0.8084965
    
    group_by(test,Species) 
    # A tibble: 6 x 5
    # Groups:   Species [3]
      Sepal.Length Sepal.Width Petal.Length Petal.Width Species   
             <dbl>       <dbl>        <dbl>       <dbl> <fct>     
    1          5.1         3.5          1.4         0.2 setosa    
    2          4.9         3            1.4         0.2 setosa    
    3          7           3.2          4.7         1.4 versicolor
    4          6.4         3.2          4.5         1.5 versicolor
    5          6.3         3.3          6           2.5 virginica 
    6          5.8         2.7          5.1         1.9 virginica 
    #先按照Species分组,再计算每组Sepal.Length的平均值和标准差
    summarise(group_by(test, Species),mean(Sepal.Length), sd(Sepal.Length))
    # A tibble: 3 x 3
      Species    `mean(Sepal.Length)` `sd(Sepal.Length)`
      <fct>                     <dbl>              <dbl>
    1 setosa                     5                 0.141
    2 versicolor                 6.7               0.424
    3 virginica                  6.05              0.354
    
    1. 管道操作和统计某列unique值
    #1. 管道操作 %>% (cmd/ctr + shift + M)
    test %>% 
    +   group_by(Species) %>% 
    +   summarise(mean(Sepal.Length), sd(Sepal.Length))
    # A tibble: 3 x 3
      Species    `mean(Sepal.Length)` `sd(Sepal.Length)`
      <fct>                     <dbl>              <dbl>
    1 setosa                     5                 0.141
    2 versicolor                 6.7               0.424
    3 virginica                  6.05              0.354
    #2. count 统计某一列中不重复的数据以及其个数
    count(test, Species)
         Species n
    1     setosa 2
    2 versicolor 2
    3  virginica 2
    
    1. dplyr处理关系数据
    > options(stringsAsFactors = F) #在读入数据时,遇到字符串之后,不将其转换为factors,仍然保留为字符串格式
    > 
    > test1 <- data.frame(x = c('b','e','f','x'), 
    +                     z = c("A","B","C",'D'),
    +                     stringsAsFactors = F)
    > test1
      x z
    1 b A
    2 e B
    3 f C
    4 x D
    > test2 <- data.frame(x = c('a','b','c','d','e','f'), 
    +                     y = c(1,2,3,4,5,6),
    +                     stringsAsFactors = F)
    > test2 
      x y
    1 a 1
    2 b 2
    3 c 3
    4 d 4
    5 e 5
    6 f 6
    > inner_join(test1, test2, by = "x")#內连inner_join,取交集
      x z y
    1 b A 2
    2 e B 5
    3 f C 6
    > left_join(test1, test2, by = 'x')#左连left_join
      x z  y
    1 b A  2
    2 e B  5
    3 f C  6
    4 x D NA
    > left_join(test2, test1, by = 'x')
      x y    z
    1 a 1 <NA>
    2 b 2    A
    3 c 3 <NA>
    4 d 4 <NA>
    5 e 5    B
    6 f 6    C
    > full_join( test1, test2, by = 'x')#全连full_join
      x    z  y
    1 b    A  2
    2 e    B  5
    3 f    C  6
    4 x    D NA
    5 a <NA>  1
    6 c <NA>  3
    7 d <NA>  4
    > semi_join(x = test1, y = test2, by = 'x')#半连接:返回能够与y表匹配的x表所有记录semi_join
      x z
    1 b A
    2 e B
    3 f C
    > anti_join(x = test2, y = test1, by = 'x')#反连接:返回无法与y表匹配的x表的所记录anti_join
      x y
    1 a 1
    2 c 3
    3 d 4
    > test1 <- data.frame(x = c(1,2,3,4), y = c(10,20,30,40))
    > test1
      x  y
    1 1 10
    2 2 20
    3 3 30
    4 4 40
    > test2 <- data.frame(x = c(5,6), y = c(50,60))
    > test2
      x  y
    1 5 50
    2 6 60
    > test3 <- data.frame(z = c(100,200,300,400))
    > test3
        z
    1 100
    2 200
    3 300
    4 400
    > bind_rows(test1, test2)#需要两个表格列数相同
      x  y
    1 1 10
    2 2 20
    3 3 30
    4 4 40
    5 5 50
    6 6 60
    > bind_cols(test1, test3)#需要两个表格行数相同
      x  y   z
    1 1 10 100
    2 2 20 200
    3 3 30 300
    4 4 40 400
    

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