问题
I have a data.frame
where I'd like to remove entire groups if any of their members meets a condition.
In this first example, if the values are numbers and the condition is NA
the code below works.
df <- structure(list(world = c(1, 2, 3, 3, 2, NA, 1, 2, 3, 2), place = c(1,
1, 2, 2, 3, 3, 1, 2, 3, 1), group = c(1, 1, 1, 2, 2, 2, 3,
3, 3, 3)), .Names = c("world", "place", "group"), row.names = c(NA,
-10L), class = "data.frame")
ans <- ddply(df, . (group), summarize, code=mean(world))
ans$code[is.na(ans$code)] <- 0
ans2 <- merge(df,ans)
final.ans <- ans2[ans2$code !=0,]
However, this ddply
maneuver with the NA
values will not work if the condition is something other than "NA
", or if the value are non-numeric.
For example, if I wanted to remove any groups which had a member with a world value of AF
(as in the data.frame below) this ddply
trick would not work.
df2 <-structure(list(world = structure(c(1L, 2L, 3L, 3L, 3L, 5L, 1L,
4L, 2L, 4L), .Label = c("AB", "AC", "AD", "AE", "AF"), class = "factor"),
place = c(1, 1, 2, 2, 3, 3, 1, 2, 3, 1), group = c(1,
1, 1, 2, 2, 2, 3, 3, 3, 3)), .Names = c("world", "place",
"group"), row.names = c(NA, -10L), class = "data.frame")
I can envision a for-loop where for each group the value of each member is checked, and if the condition is met a code
column could be populated, and then a subset could me made based on that code.
But, perhaps there is a vectorized, r way to do this?
回答1:
Try
library(dplyr)
df2 %>%
group_by(group) %>%
filter(!any(world == "AF"))
Or as per metionned by @akrun:
setDT(df2)[, if(!any(world == "AF")) .SD, group]
Or
setDT(df2)[, if(all(world != "AF")) .SD, group]
Which gives:
#Source: local data frame [7 x 3]
#Groups: group
#
# world place group
#1 AB 1 1
#2 AC 1 1
#3 AD 2 1
#4 AB 1 3
#5 AE 2 3
#6 AC 3 3
#7 AE 1 3
回答2:
alternate data.table solution:
setDT(df2)
df2[!(group %in% df2[world == "AF",group])]
gives:
world place group
1: AB 1 1
2: AC 1 1
3: AD 2 1
4: AB 1 3
5: AE 2 3
6: AC 3 3
7: AE 1 3
Using keys we can be a bit faster:
setkey(df2,group)
df2[!J((df2[world == "AF",group]))]
回答3:
Base package:
df2[df2$group != df2[df2$world=='AF', 3],]
Output:
world place group
1 AB 1 1
2 AC 1 1
3 AD 2 1
7 AB 1 3
8 AE 2 3
9 AC 3 3
10 AE 1 3
Using sqldf
:
library(sqldf)
sqldf("SELECT df2.world, df2.place, [group] FROM df2
LEFT JOIN
(SELECT * FROM df2 WHERE world LIKE 'AF') AS t
USING([group])
WHERE t.world IS NULL")
Output:
world place group
1 AB 1 1
2 AC 1 1
3 AD 2 1
4 AB 1 3
5 AE 2 3
6 AC 3 3
7 AE 1 3
回答4:
Base R option using ave
df2[with(df2, ave(world != "AF", group, FUN = all)),]
# world place group
#1 AB 1 1
#2 AC 1 1
#3 AD 2 1
#7 AB 1 3
#8 AE 2 3
#9 AC 3 3
#10 AE 1 3
Or we can also use subset
subset(df2, ave(world != "AF", group, FUN = all))
The above can also be written as
df2[with(df2, !ave(world == "AF", group, FUN = any)),]
and
subset(df2, !ave(world == "AF", group, FUN = any))
来源:https://stackoverflow.com/questions/31661704/remove-group-from-data-frame-if-at-least-one-group-member-meets-condition