# How to do vlookup and fill down (like in excel) in R?

I have a dataset that is too large to put into Excel (about 105 000 rows and 30 columns), so I thought I'd try `R` instead.

I have a categorical variable that I would like to assign it to a number. In Excel, I would probably do something with `VLOOKUP` and fill. How would I go about doing the same thing in `R`?

Essentially, what I have is a HouseType variable, and I need to calculate the HouseTypeNo. Here are some sample data:

``````HouseType HouseTypeNo
Semi            1
Single          2
Row             3
Single          2
Apartment       4
Apartment       4
Row             3
``````

Also, I'm not very proficient in `R` so I'd greatly appreciate an explanation of the solution as well.

Thanks!

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If I understand your question correctly, here are four methods to do the equivalent of Excel's `VLOOKUP` and fill down using `R`:

``````# load sample data from Q
stringsAsFactors = FALSE,
text="HouseType HouseTypeNo
Semi            1
Single          2
Row             3
Single          2
Apartment       4
Apartment       4
Row             3")

# create a toy large table with a 'HouseType' column
# but no 'HouseTypeNo' column (yet)
largetable <- data.frame(HouseType = as.character(sample(unique(hous\$HouseType), 1000, replace = TRUE)), stringsAsFactors = FALSE)

# create a lookup table to get the numbers to fill
# the large table
lookup <- unique(hous)
HouseType HouseTypeNo
1      Semi           1
2    Single           2
3       Row           3
5 Apartment           4
``````

Here are four methods to fill the `HouseTypeNo` in the `largetable` using the values in the `lookup` table:

First with `merge` in base:

``````# 1. using base
base1 <- (merge(lookup, largetable, by = 'HouseType'))[,-3]
``````

A second method with named vectors in base:

``````# 2. using base and a named vector
housenames <- as.numeric(1:length(unique(hous\$HouseType)))
names(housenames) <- unique(hous\$HouseType)

base2 <- data.frame(HouseType = largetable\$HouseType,
HouseTypeNo = (housenames[largetable\$HouseType]))
``````

Third, using the `plyr` package:

``````# 3. using the plyr package
library(plyr)
plyr1 <- join(largetable, lookup, by = "HouseType")
``````

Fourth, using the `sqldf` package

``````# 4. using the sqldf package
library(sqldf)
sqldf1 <- sqldf("SELECT largetable.HouseType, lookup.HouseTypeNo
FROM largetable
INNER JOIN lookup
ON largetable.HouseType = lookup.HouseType")
``````

If it's possible that some house types in `largetable` do not exist in `lookup` then a left join would be used:

``````sqldf("select * from largetable left join lookup using (HouseType)")
``````

Corresponding changes to the other solutions would be needed too.

Is that what you wanted to do? Let me know which method you like and I'll add commentary.

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@G. Grothendieck, thanks for the edit –  Ben Mar 9 '13 at 15:56
I realized this is rather late, but thanks for your help. I tried both the first and second method. Both of them worked well. Again, thanks for answering the question! –  user2142810 Apr 4 '13 at 21:22
You're welcome. If it answered your question you can indicate this by clicking on the tick under the arrows to the upper left. That will be helpful to others who have the same question. –  Ben Apr 4 '13 at 21:50
I think solution #2 works only because in your example the unique values happen to be in increasing order(=the first unique name is 1 the second unique name is 2 and so on). If you add in 'hous' lets say in the second row 'HousType=ECII' , HousTypeNo='17' the lookup goes all wrong. –  ECII Dec 9 '13 at 18:43
Great post. Thanks for sharing! #4 worked nicely for my application ... joining across two very large, 400MB tables. –  Nathaniel Payne May 2 '14 at 5:56

Starting with:

``````houses <- read.table(text="Semi            1
Single          2
Row             3
Single          2
Apartment       4
Apartment       4
Row             3",col.names=c("HouseType","HouseTypeNo"))
``````

... you can use

``````as.numeric(factor(houses\$HouseType))
``````

... to give a unique number for each house type. You can see the result here:

``````> houses2 <- data.frame(houses,as.numeric(factor(houses\$HouseType)))
> houses2
HouseType HouseTypeNo as.numeric.factor.houses.HouseType..
1      Semi           1                                    3
2    Single           2                                    4
3       Row           3                                    2
4    Single           2                                    4
5 Apartment           4                                    1
6 Apartment           4                                    1
7       Row           3                                    2
``````

... so you end up with different numbers on the rows (because the factors are ordered alphabetically) but the same pattern.

(EDIT: the remaining text in this answer is actually redundant. It occurred to me to check and it turned out that `read.table()` had already made houses\$HouseType into a factor when it was read into the dataframe in the first place).

However, you may well be better just to convert HouseType to a factor, which would give you all the same benefits as HouseTypeNo, but would be easier to interpret because the house types are named rather than numbered, e.g.:

``````> houses3 <- houses
> houses3\$HouseType <- factor(houses3\$HouseType)
> houses3
HouseType HouseTypeNo
1      Semi           1
2    Single           2
3       Row           3
4    Single           2
5 Apartment           4
6 Apartment           4
7       Row           3
> levels(houses3\$HouseType)
[1] "Apartment" "Row"       "Semi"      "Single"
``````
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(+1) too slow :) –  Hemmo Mar 8 '13 at 21:32
Thanks for answering my question. I tried this method too and it worked as well! –  user2142810 Apr 4 '13 at 21:23
@user2142810: Glad to help. You can now select the method that worked best for you and tick that answer as Accepted. If you have difficulty selecting between the answers, Ben's is more complete than mine so I suggest you tick his answer. –  Simon Apr 4 '13 at 21:44

I also like using `qdapTools::lookup` or shorthand binary operator `%l%`. It works identically to an Excel vlookup, but it accepts name arguments opposed to column numbers

``````## Replicate Ben's data:
hous <- structure(list(HouseType = c("Semi", "Single", "Row", "Single",
"Apartment", "Apartment", "Row"), HouseTypeNo = c(1L, 2L, 3L,
2L, 4L, 4L, 3L)), .Names = c("HouseType", "HouseTypeNo"),
class = "data.frame", row.names = c(NA, -7L))

largetable <- data.frame(HouseType = as.character(sample(unique(hous\$HouseType),
1000, replace = TRUE)), stringsAsFactors = FALSE)

## It's this simple:
library(qdapTools)
largetable[, 1] %l% hous
``````
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Solution #2 of @Ben's answer is not reproducible in other more generic examples. It happens to give the correct lookup in the example because the unique `HouseType` in `houses` appear in increasing order. Try this:

``````hous <- read.table(header = TRUE,   stringsAsFactors = FALSE,   text="HouseType HouseTypeNo
Semi            1
ECIIsHome       17
Single          2
Row             3
Single          2
Apartment       4
Apartment       4
Row             3")

largetable <- data.frame(HouseType = as.character(sample(unique(hous\$HouseType), 1000, replace = TRUE)), stringsAsFactors = FALSE)
lookup <- unique(hous)
``````

Bens solution#2 gives

``````housenames <- as.numeric(1:length(unique(hous\$HouseType)))
names(housenames) <- unique(hous\$HouseType)
base2 <- data.frame(HouseType = largetable\$HouseType,
HouseTypeNo = (housenames[largetable\$HouseType]))
``````

which when

``````unique(base2\$HouseTypeNo[ base2\$HouseType=="ECIIsHome" ])
[1] 2
``````

when the correct answer is 17 from the lookup table

The correct way to do it is

`````` hous <- read.table(header = TRUE,   stringsAsFactors = FALSE,   text="HouseType HouseTypeNo
Semi            1
ECIIsHome       17
Single          2
Row             3
Single          2
Apartment       4
Apartment       4
Row             3")

largetable <- data.frame(HouseType = as.character(sample(unique(hous\$HouseType), 1000, replace = TRUE)), stringsAsFactors = FALSE)

housenames <- tapply(hous\$HouseTypeNo, hous\$HouseType, unique)
base2 <- data.frame(HouseType = largetable\$HouseType,
HouseTypeNo = (housenames[largetable\$HouseType]))
``````

Now the lookups are performed correctly

``````unique(base2\$HouseTypeNo[ base2\$HouseType=="ECIIsHome" ])
ECIIsHome
17
``````

I tried to edit Bens answer but it gets rejected for reasons I cannot understand.

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