dplyr mutate():如果组为 NA,则忽略值

Rat*_*nil 1 r dplyr

我是新手dplyr,有以下问题。我有data.frame一列作为分组变量。有些行属于一个组,分组列是NA.

我需要使用dplyr函数向 data.frame 添加一些列mutate。我更喜欢dplyr忽略分组列等于的所有行NA。我用一个例子来说明:

library(dplyr)

set.seed(2)

# Setting up some dummy data
df <- data.frame(
  Group = factor(c(rep("A",3),rep(NA,3),rep("B",5),rep(NA,2))),
  Value = abs(as.integer(rnorm(13)*10))
)

# Using mutate to calculate differences between values within the rows of a group
df <- df %>%
  group_by(Group) %>%
  mutate(Diff = Value-lead(Value))

df
# Source: local data frame [13 x 3]
# Groups: Group [3]
# 
#     Group Value  Diff
#    (fctr) (int) (int)
# 1       A     8     7
# 2       A     1   -14
# 3       A    15    NA
# 4      NA    11    11
# 5      NA     0    -1
# 6      NA     1    -8
# 7       B     7     5
# 8       B     2   -17
# 9       B    19    18
# 10      B     1    -3
# 11      B     4    NA
# 12     NA     9     6
# 13     NA     3    NA
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在没有组的情况下计算行之间的差异是没有意义的,并且会破坏数据。我需要删除这些行并这样做:

df$Diff[is.na(df$Group)]  <- NA
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有没有办法使用 %>% 将上述命令包含到 dplyr-chain 中?某处:

df <- df %>%
  group_by(Group) %>%
  mutate(Diff = Value-lead(Value)) %>%
  filter(!is.na(Group))
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但是没有组的行没有一起删除?或者更好的是,有没有办法在dplyr没有组的情况下忽略行?

期望的结果是:

# Source: local data frame [13 x 3]
# Groups: Group [3]
# 
#     Group Value  Diff
#    (fctr) (int) (int)
# 1       A     8     7
# 2       A     1   -14
# 3       A    15    NA
# 4      NA    11    NA
# 5      NA     0    NA
# 6      NA     1    NA
# 7       B     7     5
# 8       B     2   -17
# 9       B    19    18
# 10      B     1    -3
# 11      B     4    NA
# 12     NA     9    NA
# 13     NA     3    NA
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tch*_*rty 6

只需iflelse为您尝试创建的变量使用一个条件:

library(dplyr)
set.seed(2)

df = data.frame(
  Group = factor(c(rep("A",3), rep(NA,3), rep("B",5), rep(NA,2))),
  Value = abs(as.integer(rnorm(13)*10))
) %>% 
  group_by(Group) %>%
  mutate(Diff = ifelse(is.na(Group), as.integer(NA), Value-lead(Value)))
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