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Probability Distribution (Part - 1) | Additional Topics for IIT JAM Mathematics PDF Download

Introduction to Probability Distributions - Random Variables
A random variable is defined as a function that associates a real number (the probability value) to an outcome of an experiment.
In other words, a random variable is a generalization of the outcomes or events in a given sample space. This is possible since the random variable by definition can change so we can use the same variable to refer to different situations. Random variables make working with probabilities much neater and easier.
A random variable in probability is most commonly denoted by capital X, and the small letter x is then used to ascribe a value to the random variable.
For examples, given that you flip a coin twice, the sample space for the possible outcomes is given by the following:
Probability Distribution (Part - 1) | Additional Topics for IIT JAM Mathematics
There are four possible outcomes as listed in the sample space above; where H stands for heads and T stands for tails.
The random variable X can be given by the following:
Probability Distribution (Part - 1) | Additional Topics for IIT JAM Mathematics
To find the probability of one of those out comes we denote that question as:
P(X = x)
which means that the probability that the random variable is equal to some real number x.
In the above example, we can say:
Let X be a random variable defined as the number of heads obtained when two coins are tossed. Find the probability the you obtain two heads.
So now we've been told what X is and that x = 2, so we write the above information as:
P(X = 2)
Since we already have the sample space, we know that there is only one outcomes with two heads, so we find the probability as:
P(X = 2) = 1/4
we can also simply write the above as:
P(X) = 1/4
From this example, you should be able to see that the random variable X refers to any of the elements in a given sample space.
There are two types of random variables: discrete variables and continuous random variables.

Discrete Random Variables
The word discrete means separate and individual. Thus discrete random variables are those that take on integer values only. They never include fractions or decimals.
A quick example is the sample space of any number of coin flips, the outcomes will always be integer values, and you'll never have half heads or quarter tails. Such a random variable is referred to as discrete. Discrete random variables give rise to discrete probability distributions.

Continuous Random Variable
Continuous is the opposite of discrete. Continuous random variables are those that take on any value including fractions and decimals. Continuous random variables give rise to continuous probability distributions.

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FAQs on Probability Distribution (Part - 1) - Additional Topics for IIT JAM Mathematics

1. What is a probability distribution?
Ans. A probability distribution refers to the mathematical function that describes the likelihood of different outcomes occurring in a random experiment or event. It provides a set of probabilities for each possible outcome.
2. What are the properties of a probability distribution?
Ans. A probability distribution must satisfy two main properties: 1) The sum of all probabilities must equal 1, and 2) The probabilities for each outcome must be between 0 and 1, inclusive.
3. How is a probability distribution represented?
Ans. A probability distribution can be represented in various ways, depending on the context. It can be graphically represented using a histogram, bar chart, or line graph. Alternatively, it can be represented through a mathematical equation or a table showing the probabilities for each outcome.
4. What is the difference between a discrete and a continuous probability distribution?
Ans. A discrete probability distribution is one where the random variable can only take on specific values, usually integers. The probabilities for each value are defined individually. On the other hand, a continuous probability distribution is one where the random variable can take on any value within a certain range. The probabilities are represented by a probability density function rather than individual values.
5. How can probability distributions be used in real-life applications?
Ans. Probability distributions have numerous applications in various fields. They can be used in finance to model stock prices or investment returns. In engineering, they can be used to analyze failure rates or reliability of systems. In medicine, probability distributions can help in determining the effectiveness of a treatment or the likelihood of a disease occurring.
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