A random variable is said to be discrete if the set of values it can take (its support) has either a finite or an infinite but countable number of elements. Its probability distribution can be characterized through a function called probability mass function.
The following is a formal definition.
Definition
A random variable
is discrete if its support
is countable and there exist a function
,
called probability mass function of
,
such
that
where
is the probability that
will take the value
.
A discrete random variable is often said to have a discrete probability distribution.
Here are some examples.
Let
be a random variable that can take only three values
(
,
and
),
each with probability
.
Then,
is a discrete variable. Its support
is
and
its probability mass function
is
So, for example, the probability that
will be equal to
is
and
the probability that
will be equal to
is
because
does not belong to the support of
.
Let
be a random variable. Let its support be the set of natural numbers,
that
is,
and
its probability mass function
be
Note that differently from the previous example, where the support was finite, in this example the support is infinite.
What is the probability that
will be equal to
?
Since
is a natural number, it belongs to the support of
and its probability
is
What is the probability that
will be equal to
?
Since
is not a natural number, it does not belong to the support. As a consequence,
its probability
is
How do we compute the probability that the realization of a discrete variable
will belong to a given set of numbers
?
This is accomplished by summing the values of the probability mass function
over all the elements of
:
Example
Consider the variable
introduced in Example 2 above. Suppose we want to compute the probability that
belongs to the
set
Then,
The expected value
of a discrete random variable is computed with the
formula
Note that the sum is over the whole support
.
Example
Consider a variable having
supportand
probability mass
function
Its
expected value
is
By using the definition of
varianceand
the formula for the expected value illustrated in the previous section, we can
write the variance of a discrete random variable
as
Example
Take the variable in the previous example. We have already calculated its
expected
value:Its
variance
is
The next table contains some examples of discrete distributions that are frequently encountered in probability theory and statistics.
Name of the discrete distribution | Support | Type of support |
---|---|---|
Bernoulli | {0,1} | Finite |
Binomial | {0,1,2,...,n} | Finite |
Poisson | The set of all non-negative integer numbers | Infinite but countable |
You can read a thorough explanation of discrete random variables in the lecture entitled Random variables.
You can also find more details about the probability mass function in this glossary entry.
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Please cite as:
Taboga, Marco (2021). "Discrete random variable", Lectures on probability theory and mathematical statistics. Kindle Direct Publishing. Online appendix. https://www.statlect.com/glossary/discrete-random-variable.
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