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Discrete probability distribution counts occurrences with finite outcomes. The common examples of discrete probability distribution include Bernoulli, Binomial and Poisson distributions. In this article we will explore discrete probability distribution along with discrete probability distribution definition, discrete probability distribution condition and discrete probability distribution formulas. Table of Content What is Discrete Probability Distribution?A probability distribution that gives the finite trials of a discrete random variable at a given point in time is called a discrete probability distribution. The probability distribution gives the different values of a random variable along with its different probabilities. The two types of probability distribution include discrete probability distribution and continuous probability distribution. Discrete Probability Distribution Definition
Conditions for Discrete Probability DistributionConditions for the discrete probability distribution are:
Discrete Probability Distribution ExampleLet two coins be tossed then the probability of getting a tail is an example of a discrete probability distribution. The sample space for the given event is {HH, HT, TH, TT} and X be the number of tails then, the discrete probability distribution table is given by:
Discrete Probability Distribution FormulasThe different formulas for the discrete probability distribution like probability mass function, cumulative distribution function, mean and variance are given below. PMF of Discrete Probability DistributionPMF of a discrete random variable X is the value completely equal to x. The PMF i.e., probability mass function of discrete probability distribution is given by:
CDF of Discrete Probability DistributionCDF of a discrete random variable X is less than or equal to value x. The CDF i.e., cumulative distribution function of discrete probability distribution is given by:
Discrete Probability Distribution MeanMean of discrete probability distribution is the average of all the values that a discrete variable can obtain. It is also called as the expected value of the discrete probability distribution. The mean of discrete probability distribution is given by:
Discrete Probability Distribution VarianceVariance of discrete probability distribution is defined as the product of squared difference of distribution and mean with PMF. The variance of the discrete probability distribution is given by:
How to Find Discrete Probability FunctionSteps to find the discrete probability function are given below:
Types of Discrete Probability DistributionThe different types of discrete probability distribution are listed below. Bernoulli DistributionA discrete probability distribution with the probability of success p if the value of random variable is 1 and the probability of failure 1-p if the value of random variable is zero is called the Bernoulli distribution. The probability mass function of the Bernoulli distribution is given by:
Binomial DistributionA discrete probability distribution that includes the number of trials n, probability of success and probability of failure is called as Binomial distribution. The probability mass function of the Binomial distribution is given by:
Poisson DistributionA discrete probability distribution that gives the number of events occurred at a specific time period with the help of its mean is called as the Poisson distribution. The probability mass function of Poisson distribution is given by:
Geometric DistributionA discrete probability distribution that includes the successive failure probability until the success probability is encountered is called as Geometric distribution. The probability mass function of the geometric distribution is given by:
Solved Examples on Discrete Probability DistributionExample 1: Construct the discrete probability table when a coin is tossed two times and X be random variable representing the number of one head. Solution: Sample space of two coin tossed = 4 i.e., {HH, HT, TH, TT} X: Number of one head The below table represents the discrete probability.
Example 2: Find the value of p from the given discrete probability table.
Solution:
Example 3: Find the mean of discrete probability distribution using below table.
Solution:
Example 4: If there are 15 pens in which 3 pens are defective and the probability of pen is defective 0.5 then, find the discrete probability of pen to be defective. Solution:
Practice Questions on Discrete Probability DistributionQ1. Construct the discrete probability table when a dice is rolled, and X be random variable representing the numbers greater than equal to 3. Q2. Find the value of a from the given discrete probability table.
Q3. Find the expected value of discrete probability distribution using below table.
Q4. Determine the probability if the number of trials is 100, number of successes is 94 and the probability of failure is 0.4. FAQs on Discrete Probability DistributionWhat is Discrete Probability Distribution?
What are Requirements of Discrete Probability Distribution?
What is Discrete and Continuous Probability Distribution?
Can Expected Value of Discrete Probability Distribution be Negative?
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Mathematics |
Type: | Geek |
Category: | Coding |
Sub Category: | Tutorial |
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