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How to make a function to use one or mores couples of values (x1,y1 ; x2,y2 ; ... according to need) to subset a data frame like

selection <- function(x1,y1, ...){
               dfselected    <- subset(df, V1 == "x1" & V2 == "y1" 
              ##  MAY OR MAY NOT BE PRESENT ##
                                         | V1 == "x2" & V2 == "y2")

I can do it with subset() for a single indexing. Example:

df <- data.frame(
        V1 = c(rep("a",5), rep("b",5)),
        V2 = rep(c(1:5),2),
        V3 = c(101:110)


V1 V2  V3
a  1  101
a  2  102
a  3  103
a  4  104
a  5  105
b  1  106
b  2  107
b  3  108
b  4  109
b  5  110

And the subsetting for the couples ("a","3") and ("b","4") look likes

dfselected <- subset(df, V1 == "a" & V2 == 3 | V1 == "b" & V2 == 4 )

I couldn't find a similar function. I don't know if I have to pass an unspecified number of parameters to a function (the so-called "three dots") or to use if/else. I'am a beginner to functions, so links or examples are welcome too. I started mostly with that: http://www.ats.ucla.edu/stat/r/library/intro_function.htm

------------------------------ Solution after hadley's answer

selection <- function (x,y){
                            match <- data.frame(
                                               V1 = x,
                                               V2 = y,
                                               stringsAsFactors = FALSE
                            return(dplyr::semi_join(df, match))
share|improve this question

2 Answers 2

up vote 3 down vote accepted

It sounds like you want a semi-join: find all rows in x that have matching entries in y:

df <- data.frame(
  V1 = c(rep("a",5), rep("b",5)),
  V2 = rep(c(1:5), 2),
  V3 = c(101:110),
  stringsAsFactors = FALSE

match <- data.frame(
  V1 = c("a", "b"),
  V2 = c(3L, 4L),
  stringsAsFactors = FALSE

semi_join(df, match)
share|improve this answer
Great! I turned it in a function (see edit of my question) –  nebi Jan 30 at 13:27

Unless I'm missing something, you could just use base R's merge().

With the two example data.frames Hadley provided,

merge(df, match)
#   V1 V2  V3
# 1  a  3 103
# 2  b  4 109
share|improve this answer
I think merge will work most of the time, but I'm not sure about its behaviour in edge cases where rows are duplicated in either x or y. –  hadley Jan 30 at 15:01
@hadley -- It works just fine, as far as I can see. To see how it deals with repeated rows, just do: df2 <- rbind(df, df[9,]); match2 <- match[c(1,1,1,2),]. Then, depending on how you want to treat repeated rows in match2, do either merge(df2, match2) or merge(df2, unique(match2)). –  Josh O'Brien Jan 30 at 15:12
And if you have repeated rows in both? Does it do a cartesian product? I'm sure there's some reason I made semi_join() :/ (apart from the speed and communication value of the name) –  hadley Jan 30 at 15:26
@hadley -- The e.g. I gave in previous comment does have repeated rows in both df2 and match2. –  Josh O'Brien Jan 30 at 15:32
Doh, good point. Ooh, but semi_join() will never change the order of the rows, unlike merge(). –  hadley Jan 30 at 15:42

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