Discrete refers to when our sample space is countable, such as in the cases of coin tosses or rolling dice.
In discrete probability distributions, the sample space is and .
The following are the six different kinds of discrete distributions that we oftenencounter in probability theory:
Bernoulli distribution
Binomial distribution
Geometric distribution
Hypergeometric distribution
Poisson distribution
Let's define them in order.
For the Bernoulli distribution, let's use the example of a coin toss, where our sample space is Ω = {H, T} (where H is heads and T is tails) and p ∈ [0, 1] (that is, 0 ≤ p ≤ 1). We denote the distribution as B(1, p), such that the following applies:
But now, let's suppose the coin is flipped n times, each with the aforementioned probability of p for the outcome being heads. Then, the binomial distribution, denoted as B(n, p), states the following:
Therefore, we have the following:
Generally, the binomial distribution is written as follows:
The geometric distribution does not keep any memory of past events and so is memory-less. Suppose we flip our coin again; this distribution does not give us any indication as to when we can expect a heads result or how long it will take. So, we write the probability of getting heads after getting tails k times as follows:
Let's say we have a bucket filled with balls of two colors—red and black (which we will denote as r and b, respectively). From the bucket, we have picked out n balls and we want to figure out the probability that k of the balls are black. For this, we use the hypergeometric distribution, which looks as follows:
The Poisson distribution is a bit different from the other distributions. It is used to model rare events that occur at a rate, λ. It is denoted as P(λ) and is written as follows: