I have a data.frame in R. I want to try two different conditions on two different columns, but I want these conditions to be inclusive. Therefore, I would like to use "OR" to combine the conditions. I have used the following syntax before with lot of success when I wanted to use the "AND" condition.

my.data.frame <- data[(data$V1 > 2) & (data$V2 < 4), ]

But I don't know how to use an 'OR' in the above.

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    Instead of getting testy about 'basic' questions like this, view them as an opportunity to make the internet better. SO's google-juice is strong, and every time a SO question replaces a horrendous listserv question from 2004 an angel gets its wings. – Andrew Jun 4 '12 at 16:19
  • I think disparaging listserv questions is a disservice to persons seeking to learn how to search. People should consider using a good search engine for specialized questions. My choice is markmail.org/search/?q=list%3Aorg.r-project but others may choose Rseek.org. – 42- Sep 1 '16 at 19:11
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    I think disparaging comments that disparage listserv questions is a disservice to persons seeking to read non-disparaging comments – hedgedandlevered Nov 15 '16 at 6:32
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    I agree that simple questions have a valuable place. It gives those of us who learn by google better material, and there will be less "basic" questions asked in the future since it will come up when searched. Also, learning R from scratch without training can be daunting because often resources are more technical than for other programming languages. – schradera Nov 17 '16 at 18:01
my.data.frame <- subset(data , V1 > 2 | V2 < 4)

An alternative solution that mimics the behavior of this function and would be more appropriate for inclusion within a function body:

new.data <- data[ which( data$V1 > 2 | data$V2 < 4) , ]

Some people criticize the use of which as not needed, but it does prevent the NA values from throwing back unwanted results. The equivalent (.i.e not returning NA-rows for any NA's in V1 or V2) to the two options demonstrated above without the which would be:

 new.data <- data[ !is.na(data$V1 | data$V2) & ( data$V1 > 2 | data$V2 < 4)  , ]

Note: I want to thank the anonymous contributor that attempted to fix the error in the code immediately above, a fix that got rejected by the moderators. There was actually an additional error that I noticed when I was correcting the first one. The conditional clause that checks for NA values needs to be first if it is to be handled as I intended, since ...

> NA & 1
[1] NA
> 0 & NA

Order of arguments may matter when using '&".

  • This is the highest voted question and then one finds: stackoverflow.com/questions/9860090/… – PatrickT Dec 9 '14 at 13:15
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    The advantage is compactness and easy of comprehension. The disadvantage is lack of utility in function building tasks. If one wants to replicate this with [ one needs to wrap in which or use additional !is.na constraints. – 42- Dec 9 '14 at 16:47
  • Is the 'which' required and if not why do you use it? – Cleb Jul 28 '15 at 22:25
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    It's not "required", but you may get a different result if you leave out the which. If both V1 and V2 are NA you would get a row of NA's at that position if you left out the which. I work with large datasets and even a relatively small percentage of NA's will really fill up my screen with junk output. Some people think this is a feature. I don't. – 42- Jul 29 '15 at 0:06
  • how do you include a call to grepl or grep with this to also do pattern matching for desired rows, in addition to these conditionals? – user5359531 Jul 7 '17 at 22:17

You are looking for "|." See http://cran.r-project.org/doc/manuals/R-intro.html#Logical-vectors

my.data.frame <- data[(data$V1 > 2) | (data$V2 < 4), ]
  • This is NOT robust to the existence of NAs in a dataframe: vc <- data.frame(duzey=factor(c("Y","O","Y","D","Y","Y","O"), levels=c("D","O","Y"), ordered=TRUE), cinsiyet=c("E","E","K",NA,"K","E","K"), yas=c(8,3,9,NA,7,NA,6), Not=c(NA,1,1,NA,NA,2,1)); vc; vc[vc$cinsiyet == "E" | vc$Not < 4,]; vc[vc$cinsiyet == "E" & vc$Not < 2,] – Erdogan CEVHER Jul 31 '18 at 10:25

Just for the sake of completeness, we can use the operators [ and [[:

df <- data.frame(v1 = runif(10), v2 = letters[1:10])

Several options

df[df[1] < 0.5 | df[2] == "g", ] 
df[df[[1]] < 0.5 | df[[2]] == "g", ] 
df[df["v1"] < 0.5 | df["v2"] == "g", ]

df$name is equivalent to df[["name", exact = FALSE]]

Using dplyr:

filter(df, v1 < 0.5 | v2 == "g")

Using sqldf:

sqldf('SELECT *
      FROM df 
      WHERE v1 < 0.5 OR v2 = "g"')

Output for the above options:

          v1 v2
1 0.26550866  a
2 0.37212390  b
3 0.20168193  e
4 0.94467527  g
5 0.06178627  j
  • how would you do this for 1 AND condition and 3 OR conditions contingent so for example: my.data.frame <- data[data$V3>10 & ((data$V1 > 2) | (data$V2 < 4) | (data$V4 <5), ]. When I do this it doesn't work – R Guru Jan 21 '16 at 15:35
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    Wow! The sqldf package is too good. Very handy especially when subset() gets a bit painful :) – Dawny33 Jun 22 '16 at 12:05

protected by zx8754 Oct 18 '17 at 9:15

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