Missing Values
Julia provides support for representing missing values in the statistical sense.
This is for situations where no value is available for a variable in an observation,
but a valid value theoretically exists.
Missing values are represented via the missing object, which is the
singleton instance of the type Missing. missing is equivalent to
NULL in SQL and
NA in R,
and behaves like them in most situations.
Propagation of Missing Values
missing values propagate automatically when passed to standard mathematical
operators and functions.
For these functions, uncertainty about the value of one of the operands
induces uncertainty about the result. In practice, this means a math operation
involving a missing value generally returns missing:
julia> missing + 1
missing
julia> "a" * missing
missing
julia> abs(missing)
missingSince missing is a normal Julia object, this propagation rule only works
for functions which have opted in to implement this behavior. This can be
achieved by:
- adding a specific method defined for arguments of type
Missing, - accepting arguments of this type, and passing them to functions which propagate them (like standard math operators).
Packages should consider
whether it makes sense to propagate missing values when defining new functions,
and define methods appropriately if this is the case. Passing a missing value
to a function which does not have a method accepting arguments of type Missing
throws a MethodError, just like for any other type.
Functions that do not propagate missing values can be made to do so by wrapping
them in the passmissing function provided by the
Missings.jl package.
For example, f(x) becomes passmissing(f)(x).
Equality and Comparison Operators
Standard equality and comparison operators follow the propagation rule presented
above: if any of the operands is missing, the result is missing.
Here are a few examples:
julia> missing == 1
missing
julia> missing == missing
missing
julia> missing < 1
missing
julia> 2 >= missing
missingIn particular, note that missing == missing returns missing, so == cannot
be used to test whether a value is missing. To test whether x is missing,
use ismissing(x).
Special comparison operators isequal and === are exceptions
to the propagation rule. They will always return a Bool value, even in the presence
of missing values, considering missing as equal to missing and as different
from any other value. They can therefore be used to test whether a value is missing:
julia> missing === 1
false
julia> isequal(missing, 1)
false
julia> missing === missing
true
julia> isequal(missing, missing)
trueThe isless operator is another exception: missing is considered
as greater than any other value. This operator is used by sort!,
which therefore places missing values after all other values:
julia> isless(1, missing)
true
julia> isless(missing, Inf)
false
julia> isless(missing, missing)
falseLogical operators
Logical (or boolean) operators |, & and xor are
another special case since they only propagate missing values when it is logically
required. For these operators, whether or not the result is uncertain, depends
on the particular operation. This follows the well-established rules of
three-valued logic which are
implemented by e.g. NULL in SQL and NA in R. This abstract definition
corresponds to a relatively natural behavior which is best explained
via concrete examples.
Let us illustrate this principle with the logical "or" operator |.
Following the rules of boolean logic, if one of the operands is true,
the value of the other operand does not have an influence on the result,
which will always be true:
julia> true | true
true
julia> true | false
true
julia> false | true
trueBased on this observation, we can conclude if one of the operands is true
and the other missing, we know that the result is true in spite of the
uncertainty about the actual value of one of the operands. If we had
been able to observe the actual value of the second operand, it could only be
true or false, and in both cases the result would be true. Therefore,
in this particular case, missingness does not propagate:
julia> true | missing
true
julia> missing | true
trueOn the contrary, if one of the operands is false, the result could be either
true or false depending on the value of the other operand. Therefore,
if that operand is missing, the result has to be missing too:
julia> false | true
true
julia> true | false
true
julia> false | false
false
julia> false | missing
missing
julia> missing | false
missingThe behavior of the logical "and" operator & is similar to that of the
| operator, with the difference that missingness does not propagate when
one of the operands is false. For example, when that is the case of the first
operand:
julia> false & false
false
julia> false & true
false
julia> false & missing
falseOn the other hand, missingness propagates when one of the operands is true,
for example the first one:
julia> true & true
true
julia> true & false
false
julia> true & missing
missingFinally, the "exclusive or" logical operator xor always propagates
missing values, since both operands always have an effect on the result.
Also note that the negation operator ! returns missing when the
operand is missing, just like other unary operators.
Control Flow and Short-Circuiting Operators
Control flow operators including if, while and the
ternary operator x ? y : z
do not allow for missing values. This is because of the uncertainty about whether
the actual value would be true or false if we could observe it.
This implies we do not know how the program should behave. In this case, a
TypeError is thrown as soon as a missing value is encountered in this context:
julia> if missing
println("here")
end
ERROR: TypeError: non-boolean (Missing) used in boolean contextFor the same reason, contrary to logical operators presented above,
the short-circuiting boolean operators && and || do not
allow for missing values in situations where the value of the operand
determines whether the next operand is evaluated or not. For example:
julia> missing || false
ERROR: TypeError: non-boolean (Missing) used in boolean context
julia> missing && false
ERROR: TypeError: non-boolean (Missing) used in boolean context
julia> true && missing && false
ERROR: TypeError: non-boolean (Missing) used in boolean contextIn contrast, there is no error thrown when the result can be determined without
the missing values. This is the case when the code short-circuits
before evaluating the missing operand, and when the missing operand is the
last one:
julia> true && missing
missing
julia> false && missing
falseArrays With Missing Values
Arrays containing missing values can be created like other arrays:
julia> [1, missing]
2-element Vector{Union{Missing, Int64}}:
1
missingAs this example shows, the element type of such arrays is Union{Missing, T},
with T the type of the non-missing values. This reflects the fact that
array entries can be either of type T (here, Int64) or of type Missing.
This kind of array uses an efficient memory storage equivalent to an Array{T}
holding the actual values combined with an Array{UInt8} indicating the type
of the entry (i.e. whether it is Missing or T).
Arrays allowing for missing values can be constructed with the standard syntax.
Use Array{Union{Missing, T}}(missing, dims) to create arrays filled with
missing values:
julia> Array{Union{Missing, String}}(missing, 2, 3)
2×3 Matrix{Union{Missing, String}}:
missing missing missing
missing missing missingUsing undef or similar may currently give an array filled with
missing, but this is not the correct way to obtain such an array.
Use a missing constructor as shown above instead.
An array with element type allowing missing entries (e.g. Vector{Union{Missing, T}})
which does not contain any missing entries can be converted to an array type that does
not allow for missing entries (e.g. Vector{T}) using
convert. If the array contains missing values, a MethodError is thrown
during conversion:
julia> x = Union{Missing, String}["a", "b"]
2-element Vector{Union{Missing, String}}:
"a"
"b"
julia> convert(Array{String}, x)
2-element Vector{String}:
"a"
"b"
julia> y = Union{Missing, String}[missing, "b"]
2-element Vector{Union{Missing, String}}:
missing
"b"
julia> convert(Array{String}, y)
ERROR: MethodError: Cannot `convert` an object of type Missing to an object of type StringSkipping Missing Values
Since missing values propagate with standard mathematical operators, reduction
functions return missing when called on arrays which contain missing values:
julia> sum([1, missing])
missingIn this situation, use the skipmissing function to skip missing values:
julia> sum(skipmissing([1, missing]))
1This convenience function returns an iterator which filters out missing values
efficiently. It can therefore be used with any function which supports iterators:
julia> x = skipmissing([3, missing, 2, 1])
skipmissing(Union{Missing, Int64}[3, missing, 2, 1])
julia> maximum(x)
3
julia> sum(x)
6
julia> mapreduce(sqrt, +, x)
4.146264369941973Objects created by calling skipmissing on an array can be indexed using indices
from the parent array. Indices corresponding to missing values are not valid for
these objects, and an error is thrown when trying to use them (they are also skipped
by keys and eachindex):
julia> x[1]
3
julia> x[2]
ERROR: MissingException: the value at index (2,) is missing
[...]This allows functions which operate on indices to work in combination with skipmissing.
This is notably the case for search and find functions. These functions return indices
valid for the object returned by skipmissing, and are also the indices of the
matching entries in the parent array:
julia> findall(==(1), x)
1-element Vector{Int64}:
4
julia> findfirst(!iszero, x)
1
julia> argmax(x)
1Use collect to extract non-missing values and store them in an array:
julia> collect(x)
3-element Vector{Int64}:
3
2
1Logical Operations on Arrays
The three-valued logic described above for logical operators is also used
by logical functions applied to arrays. Thus, array equality tests using
the == operator return missing whenever the result cannot be
determined without knowing the actual value of the missing entry. In practice,
this means missing is returned if all non-missing values of the compared
arrays are equal, but one or both arrays contain missing values (possibly at
different positions):
julia> [1, missing] == [2, missing]
false
julia> [1, missing] == [1, missing]
missing
julia> [1, 2, missing] == [1, missing, 2]
missingAs for single values, use isequal to treat missing values as equal
to other missing values, but different from non-missing values:
julia> isequal([1, missing], [1, missing])
true
julia> isequal([1, 2, missing], [1, missing, 2])
falseFunctions any and all also follow the rules of
three-valued logic. Thus, returning missing when the result cannot be determined:
julia> all([true, missing])
missing
julia> all([false, missing])
false
julia> any([true, missing])
true
julia> any([false, missing])
missing