# Is there a dictionary functionality in R

Is there a way to create a "dictionary" in R, such that it has pairs? Something to the effect of:

``````x=dictionary(c("Hi","Why","water") , c(1,5,4))
x["Why"]=5
``````

I'm asking this because I am actually looking for a two categorial variables function.

So that if x=dictionary(c("a","b"),c(5,2))

``````     x  val
1    a  5
2    b  2
``````

I want to compute x1^2+x2 on all combinations of x keys

``````     x1 x2 val1  val2  x1^2+x2
1    a  a   5     5      30
2    b  a   2     5      9
3    a  b   5     2      27
4    b  b   2     2      6
``````

And then I want to be able to retrieve the result using x1 and x2. Something to the effect of: get_result["b","a"] = 9

what is the best, efficient way to do this?

• would a data.frame not be enough for your task? what's the reason for needing a dictionary? Sep 7, 2018 at 14:01
• There's a pretty good solution here: stackoverflow.com/a/17504356/2391771 Dec 9, 2021 at 20:34

I know three R packages for dictionaries: `hash`, `hashmap`, and `dict`.

Update July 2018: a new one, `container`.

Update September 2018: a new one, collections

## hash

Keys must be character strings. A value can be any R object.

``````library(hash)
## hash-2.2.6 provided by Decision Patterns
h <- hash()
# set values
h[["1"]] <- 42
h[["foo"]] <- "bar"
h[["4"]] <- list(a=1, b=2)
# get values
h[["1"]]
##  42
h[["4"]]
## \$a
##  1
##
## \$b
##  2
h[c("1", "foo")]
## <hash> containing 2 key-value pair(s).
##   1 : 42
##   foo : bar
h[["key not here"]]
## NULL
``````

To get keys:

``````keys(h)
##  "1"   "4"   "foo"
``````

To get values:

``````values(h)
## \$`1`
##  42
##
## \$`4`
## \$`4`\$a
##  1
##
## \$`4`\$b
##  2
##
##
## \$foo
##  "bar"
``````

The `print` instance:

``````h
## <hash> containing 3 key-value pair(s).
##   1 : 42
##   4 : 1 2
##   foo : bar
``````

The `values` function accepts the arguments of `sapply`:

``````values(h, USE.NAMES=FALSE)
## []
##  42
##
## []
## []\$a
##  1
##
## []\$b
##  2
##
##
## []
##  "bar"
values(h, keys="4")
##   4
## a 1
## b 2
values(h, keys="4", simplify=FALSE)
## \$`4`
## \$`4`\$a
##  1
##
## \$`4`\$b
##  2
``````

## hashmap

`hashmap` does not offer the flexibility to store arbitrary types of objects.

Keys and values are restricted to "scalar" objects (length-one character, numeric, etc.). The values must be of the same type.

``````library(hashmap)
H <- hashmap(c("a", "b"), rnorm(2))
H[["a"]]
##  0.1549271
H[[c("a","b")]]
##   0.1549271 -0.1222048
H[] <- 9
``````

Beautiful `print` instance:

``````H
## ## (character) => (numeric)
## ##          => [+9.000000]
## ##         [b] => [-0.122205]
## ##         [a] => [+0.154927]
``````

Errors:

``````H[] <- "Z"
## Error in x\$`[[<-`(i, value): Not compatible with requested type: [type=character; target=double].
H[] <- c(1,3)
## Warning in x\$`[[<-`(i, value): length(keys) != length(values)!
``````

## dict

Currently available only on Github: https://github.com/mkuhn/dict

Strengths: arbitrary keys and values, and fast.

``````library(dict)
d <- dict()
d[] <- 42
d[[c(2, 3)]] <- "Hello!" # c(2,3) is the key
d[["foo"]] <- "bar"
d[] <- list(a=1, b=2)
d[]
##  42
d[[c(2, 3)]]
##  "Hello!"
d[]
## \$a
##  1
##
## \$b
##  2
``````

Accessing to a non-existing key throws an error:

``````d[["not here"]]
## Error in d\$get_or_stop(key): Key error:  "not here"
``````

But there is a nice feature to deal with that:

``````d\$get("not here", "default value for missing key")
##  "default value for missing key"
``````

Get keys:

``````d\$keys()
## []
##  4
##
## []
##  1
##
## []
##  2 3
##
## []
##  "foo"
``````

Get values:

``````d\$values()
## []
##  42
##
## []
##  "Hello!"
##
## []
##  "bar"
##
## []
## []\$a
##  1
##
## []\$b
##  2
``````

Get items:

``````d\$items()
## []
## []\$key
##  4
##
## []\$value
## []\$value\$a
##  1
##
## []\$value\$b
##  2
##
##
##
## []
## []\$key
##  1
##
## []\$value
##  42
##
##
## []
## []\$key
##  2 3
##
## []\$value
##  "Hello!"
##
##
## []
## []\$key
##  "foo"
##
## []\$value
##  "bar"
``````

No `print` instance.

The package also provides the function `numvecdict` to deal with a dictionary in which numbers and strings (including vectors of each) can be used as keys, and that can only store vectors of numbers.

• Is there anything wrong with hatmatrix's lists, matrices, etc. answer? If lists have the same performance as these solutions, they seem like they would be the most universally-recognized way to go. Jul 1, 2021 at 16:27
• From this answer to another question, it appears that R environments may be faster than both lists and hashes (for random non-vectorized access). Jul 1, 2021 at 16:36

You can use just `data.frame` and `row.names` to do this:

``````x=data.frame(row.names=c("Hi","Why","water") , val=c(1,5,4))
x["Why",]
 5
``````

You simply create a vector with your key value pairs.

``````animal_sounds <- c(
'cat' = 'meow',
'dog' = 'woof',
'cow' = 'moo'
)
``````
``````print(animal_sounds['cat'])
# 'meow'
``````

In that vectors, matrices, lists, etc. behave as "dictionaries" in R, you can do something like the following:

``````> (x <- structure(c(5,2),names=c("a","b"))) ## "dictionary"
a b
5 2
> (result <- outer(x,x,function(x1,x2) x1^2+x2))
a  b
a 30 27
b  9  6
> result["b","a"]
 9
``````

If you wanted a table as you've shown in your example, just reshape your array...

``````> library(reshape)
> (dfr <- melt(result,varnames=c("x1","x2")))
x1 x2 value
1  a  a    30
2  b  a     9
3  a  b    27
4  b  b     6
> transform(dfr,val1=x[x1],val2=x[x2])
x1 x2 value val1 val2
1  a  a    30    5    5
2  b  a     9    2    5
3  a  b    27    5    2
4  b  b     6    2    2
``````
• Parentheses around the assignment expressions are there just to print the results. Oct 19, 2011 at 10:50

See my answer to a very recent question. In essence, you use environments for this type of functionality.

For the higher dimensional case, you may be better off using an `array` (twodimensional) if you want the easy syntax for retrieving the result (you can name the rows and columns). As an alternative,you can `paste` together the two keys with a separator that doesn't occur in them, and then use that as a unique identifier.

To be specific, something like this:

``````tmp<-data.frame(x=c("a", "b"), val=c(5,2))
tmp2<-outer(seq(nrow(tmp)), seq(nrow(tmp)), function(lhs, rhs){tmp\$val[lhs] + tmp\$val[rhs]})
dimnames(tmp2)<-list(tmp\$x, tmp\$x)
tmp2
tmp2["a", "b"]
``````

## Using `tidyverse`

Adding an answer using more recent `tidyverse` approaches.

There are probably cleaner ways of handling the `crossing` (which creates all combinations) and `unnest`ing, but this is a quick and dirty approach.

``````library(tidyverse)

my_tbl <- tibble(x = c("A", "B"), val=c(5,2)) %>%
crossing(x1 = ., x2 = .) %>%  # Create all combinations
unnest_wider(everything(), names_sep="_") %>% # Unpack into distinct columns
mutate(result = x1_val^2 + x2_val)  # Calculate result

# Access result by accessing the row in the data frame
my_tbl %>%
filter(x1_x == "A", x2_x == "B") %>%
pull(result)
#>  27

# Convert tibble to a named vector that could be accessed more easily.
# However, this is limited to string names.
my_named_vector <- my_tbl %>%
transmute(name = str_c(x1_x, "_", x2_x), value=result) %>%
deframe()

my_named_vector[["A_B"]]
#>  27
``````

Created on 2022-04-06 by the reprex package (v2.0.1)

`tibble` version 3.1.6
`dplyr` version 1.0.8
`tidyr` version 1.2.0
`stringr` version 1.4.0