Last updated on June 4th, 2025
In probability, an event is something that may occur when we conduct an experiment. It can be a single outcome or a group of possible outcomes that result from a random experiment.
In probability, events are the possible outcomes of a random experiment. This probability-based categorization of events helps in the simplification of mathematical calculations. The number of favorable results divided by the total number of outcomes of that experiment can be used to determine the probability of events occurring.
For example, when you flip three fair coins, there are eight possible outcomes. That is, HHT, HHH, HTH, HTT, THT, THH, TTH, TTT. Let that an event be defined as A. Then Event A of getting two Heads is EA = {HHH, HHT, HTH, THH}. Then Event B of getting one Tails is EB = {HHT, HTH, THH}.
Events in probability can be classified into a variety of categories. A random experiment can only have one sample space (set of all possible outcomes of an experiment), but it can have a wide variety of events.
For example, rolling a die will have only one sample space:
Sample Space (S) = {1, 2, 3, 4, 5, 6}.
But it can have different events:
Event A of rolling an even number (A) = {2, 4, 6}
Event B of rolling a number greater than 4 (B) = {5, 6}
Event C of rolling a 3 (C) = {3}
The following is a list of some significant probability events.
In probability, independent events are events whose outcomes are not affected by the outcome of any previous event. For example, tossing a coin is an independent event, because the previous event like getting Heads will not affect the next outcome of getting Tails.
Dependent events are those events that will depend on the outcomes of the previous outcome. For example, imagine you pick a ball, let’s say Ball A, from a bag containing different colors of balls. The next time you pick another ball, there won't be Ball A in the bag. That means the probability of not getting the Ball A is already determined.
An event that will not happen is known as an impossible event. The probability of an impossible event is 0 (zero). For example, rolling a die numbered 7 is an impossible event, because a die has only 1 to 6 numbers, getting a 7 is not possible.
Whereas, a sure event is the one that will happen for sure. The probability of an event that will happen for sure is 1 (one). For example, a sure event is the sun rising tomorrow. It will happen no matter what (unless we consider extreme cosmic events).
A simple event is when there is only one specific outcome out of all possible outcomes. For example, when rolling a six-sided die, the sample space (all possible outcomes) is {1, 2, 3, 4, 5, 6}. Getting a 4 number on a rolling die refers to just one outcome 4, that is E = {4}.
Whereas, an event that consists of more than one single event from the total or sample space, then it is called a compound event. For example, getting an odd number on a die is a compound event as the events are E ={1, 3, 5} (multiple events from a single sample space).
Complementary events are two events in which one of the two can only occur if and only if the other does not exists. The sum of the complementary events is 1 (one). For example, Event A of drawing a red ball from the bag is mutually exclusive with Event B of not drawing a red ball from the bag. This can be termed as Event A = E and Event B = E’. Then E and E’ are complementary to each other.
Mutually exclusive events are those events that will not happen together. They do not have any common outcomes. For example, Event A of rolling a die of number 4 is E = {4}, and Event B of rolling a die of number 3 is E = {3}. These are mutually exclusive because both Event A and Event B cannot occur at the same time.
Exhaustive events are those events that cover all possible outcomes of an experiment. This means that when an experiment is taking place, at least one of these events must occur. For example, in an examination, the possible outcomes are passing or failing an exam.
Events with equally conceivable outcomes are ones that have an equal likelihood of occurring. For example, tossing a coin has a 50% chance of getting Heads and 50% chance of getting Tails.
We can find the probability of events using four simple steps:
Step 1: First we need to identify the sample space (list of all possible outcomes of the experiment).
Step 2: Decide what event you want to find and find how many outcomes match the event you are looking for.
Step 3: Divide the number of favorable outcomes by the total number of possible outcomes.
Probability (P) = Favourable Outcomes / Total Outcomes
Step 4: The probability after applying the formula should be between 0 and 1. That is, for example, the probability of getting a 6 on a die is
P = 1/6 = 0.167
Here are some of the real-life applications of events in probability. Let’s understand them in detail:
Probability is used to predict the chances of rain, storm, or thunder, etc.
Probability is used in predicting the match outcomes, player performance, and betting odds.
Doctors use probability to assess disease risks and treatment’s success rate.
Insurance companies calculate accident or illness probabilities.
Making mistakes when calculating probability is a common occurrence, particularly when the students are unfamiliar or new to this concept. Here are five common mistakes that students might make and how to avoid them.
A fair six-sided die is rolled. What is the probability of getting a 5?
1/6
The sample space for rolling a die is {1, 2, 3, 4, 5, 6}. There is only one favorable outcome (rolling a 5) out of six possible outcomes. Using the probability formula,
P = Favorable Outcomes / Total Outcomes = 16 = 0.167
A bag contains 3 red, 4 blue, and 5 green balls. What is the probability of drawing a blue ball?
0.333
Total no.of balls = 3 + 4 + 5 = 12
Favorable outcomes (blue balls) = 4
P (Blue) = 4/12 = 1/3 ≈ 0.333
A coin is tossed twice. What is the probability of getting at least one head?
0.75
The sample space for two coin tosses is {HH, HT, TH, TT}.
Favorable outcomes (at least one head) = {HH, HT, TH}
Total possible outcomes = 4
P (At least one head) = 3/4 = 0.75
If probability of Event A is 0.5, and the sample space is 6. What is the favorable outcome of Event A?
3
The probability of the Event A (P) = 0.5
Sample space or the Total number of Possible Outcomes = 6
According to the Probability Formula
P = Number of Favorable Outcomes / Total Number of Possible Outcomes
0.5 = Number of Favorable Outcomes / 6
Number of Favorable Outcome = 6 × 0.5 = 3
Jaipreet Kour Wazir is a data wizard with over 5 years of expertise in simplifying complex data concepts. From crunching numbers to crafting insightful visualizations, she turns raw data into compelling stories. Her journey from analytics to education ref
: She compares datasets to puzzle games—the more you play with them, the clearer the picture becomes!