如何在 r 中过滤行
通常,您可能对 R 中基于某些条件的数据框子集感兴趣。幸运的是,使用dplyr包中的filter()函数可以轻松做到这一点。
library(dplyr)
本教程解释了如何使用名为starwars的内置 dplyr 数据集实际使用此功能的几个示例:
#view first six rows of starwars dataset
head(starwars)
# A tibble: 6 x 13
name height mass hair_color skin_color eye_color birth_year gender homeworld
1 Luke~ 172 77 blond fair blue 19 male Tatooine
2 C-3PO 167 75 <NA> gold yellow 112 <NA> Tatooine
3 R2-D2 96 32 <NA> white, bl~ red 33 <NA> Naboo
4 Dart~ 202 136 none white yellow 41.9 male Tatooine
5 Leia~ 150 49 brown light brown 19 female Alderaan
6 Owen~ 178 120 brown, gr~ light blue 52 male Tatooine
# ... with 4 more variables: species , films , vehicles ,
# starships
示例 1:过滤等于某个值的行
以下代码显示如何过滤数据集以查找变量“species”等于 Droid 的行。
starwars %>% filter(species == ' Droid ')
# A tibble: 5 x 13
name height mass hair_color skin_color eye_color birth_year gender homeworld
1 C-3PO 167 75 gold yellow 112 Tatooine
2 R2-D2 96 32 white, bl~ red 33 Naboo
3 R5-D4 97 32 white, red red NA Tatooine
4 IG-88 200 140 none metal red 15 none
5 BB8 NA NA none none black NA none
# ... with 4 more variables: species , films , vehicles ,
# starships
我们可以看到数据集有 5 行满足此条件,如#A tibble: 5 x 13所示。
示例 2:使用“And”过滤行
我们还可以过滤物种为 Droid且眼睛颜色为红色的行:
starwars %>% filter(species == ' Droid ' & eye_color == ' red ') # A tibble: 3 x 13 name height mass hair_color skin_color eye_color birth_year gender homeworld 1 R2-D2 96 32 <NA> white, bl~ red 33 <NA> Naboo 2 R5-D4 97 32 <NA> white, red red NA <NA> Tatooine 3 IG-88 200 140 none metal red 15 none <NA> # ... with 4 more variables: species , films , vehicles , # starships
我们可以看到数据集中有 3 行满足这个条件。
示例 3:使用“或”过滤行
我们还可以过滤物种为 Droid或眼睛颜色为红色的行:
starwars %>% filter(species == ' Droid ' | eye_color == ' red ') # A tibble: 7 x 13 name height mass hair_color skin_color eye_color birth_year gender homeworld 1 C-3PO 167 75 <NA> gold yellow 112 <NA> Tatooine 2 R2-D2 96 32 <NA> white, bl~ red 33 <NA> Naboo 3 R5-D4 97 32 <NA> white, red red NA <NA> Tatooine 4 IG-88 200 140 none metal red 15 none <NA> 5 Bossk 190 113 none green red 53 male Trandosha 6 Nute~ 191 90 none mottled g~ red NA male Cato Nei~ 7 BB8 NA NA none none black NA none <NA> # ... with 4 more variables: species , films , vehicles , # starships
我们可以看到数据集中有 7 行满足这个条件。
示例 4:过滤列表中包含值的行
我们还可以过滤颜色列表中出现眼睛颜色的行:
starwars %>% filter(eye_color %in% c(' blue ', ' yellow ', ' red ')) # A tibble: 35 x 13 name height mass hair_color skin_color eye_color birth_year gender 1 Luke~ 172 77 blond fair blue 19 male 2 C-3PO 167 75 <NA> gold yellow 112 <NA> 3 R2-D2 96 32 <NA> white, bl~ red 33 <NA> 4 Dart~ 202 136 none white yellow 41.9 male 5 Owen~ 178 120 brown, gr~ light blue 52 male 6 Beru~ 165 75 brown light blue 47 female 7 R5-D4 97 32 <NA> white, red red NA <NA> 8 Anak~ 188 84 blond fair blue 41.9 male 9 Wilh~ 180 NA auburn, g~ fair blue 64 male 10 Chew~ 228 112 brown unknown blue 200 male # ... with 25 more rows, and 5 more variables: homeworld, species, # films, vehicles, starships
我们可以看到数据集中有 35 行的眼睛颜色为蓝色、黄色或红色。
示例 5:使用小于或大于过滤行
我们还可以对数值变量使用小于或大于运算来过滤行:
#find rows where height is greater than 250 starwars %>% filter(height > 250) # A tibble: 1 x 13 name height mass hair_color skin_color eye_color birth_year gender homeworld 1 Yara~ 264 NA none white yellow NA male Quermia # ... with 4 more variables: species , films , vehicles , # starships #find rows where height is between 200 and 220 starwars %>% filter(height > 200 & height < 220) # A tibble: 5 x 13 name height mass hair_color skin_color eye_color birth_year gender homeworld 1 Dart~ 202 136 none white yellow 41.9 male Tatooine 2 Rugo~ 206 NA none green orange NA male Naboo 3 Taun~ 213 NA none gray black NA female Kamino 4 Grie~ 216 159 none brown, wh~ green, y~ NA male Kalee 5 Tion~ 206 80 none gray black NA male Utapau # ... with 4 more variables: species , films , vehicles , # starships #find rows where height is above the average height starwars %>% filter(height > mean (height, na.rm = TRUE )) # A tibble: 51 x 13 name height mass hair_color skin_color eye_color birth_year gender 1 Dart~ 202 136 none white yellow 41.9 male 2 Owen~ 178 120 brown, gr~ light blue 52 male 3 Bigg~ 183 84 black light brown 24 male 4 Obi-~ 182 77 auburn, w~ fair blue-gray 57 male 5 Anak~ 188 84 blond fair blue 41.9 male 6 Wilh~ 180 NA auburn, g~ fair blue 64 male 7 Chew~ 228 112 brown unknown blue 200 male 8 Han ~ 180 80 brown fair brown 29 male 9 Jabb~ 175 1358 <NA> green-tan~ orange 600 herma~ 10 Jek ~ 180 110 brown fair blue NA male # ... with 41 more rows, and 5 more variables: homeworld, species, # films, vehicles, starships
您可以在此处找到filter()函数的完整文档。