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Discrete probability - Probability and probability Distributions, CSIR-NET Mathematical Sciences | Mathematics for IIT JAM, GATE, CSIR NET, UGC NET PDF Download

All probability distributions can be classified as discrete probability distributions or as continuous probability distributions, depending on whether they define probabilities associated with discrete variables or continuous variables.


Discrete vs. Continuous Variables

If a variable can take on any value between two specified values, it is called a continuous variable; otherwise, it is called a discrete variable.

Some examples will clarify the difference between discrete and continuous variables.

  • Suppose the fire department mandates that all fire fighters must weigh between 150 and 250 pounds. The weight of a fire fighter would be an example of a continuous variable; since a fire fighter's weight could take on any value between 150 and 250 pounds.

  • Suppose we flip a coin and count the number of heads. The number of heads could be any integer value between 0 and plus infinity. However, it could not be any number between 0 and plus infinity. We could not, for example, get 2.5 heads. Therefore, the number of heads must be a discrete variable.

Just like variables, probability distributions can be classified as discrete or continuous.

Discrete probability - Probability and probability Distributions, CSIR-NET Mathematical Sciences | Mathematics for IIT JAM, GATE, CSIR NET, UGC NET

 

Discrete Probability Distributions

If a random variable is a discrete variable, its probability distribution is called a discrete probability distribution.

An example will make this clear. Suppose you flip a coin two times. This simple statistical experiment can have four possible outcomes: HH, HT, TH, and TT. Now, let the random variable X represent the number of Heads that result from this experiment. The random variable X can only take on the values 0, 1, or 2, so it is a discrete random variable.

The probability distribution for this statistical experiment appears below.

The above table represents a discrete probability distribution because it relates each value of a discrete random variable with its probability of occurrence. On this website, we will cover the following discrete probability distributions.

  • Binomial probability distribution

  • Hypergeometric probability distribution

  • Multinomial probability distribution

  • Negative binomial distribution

  • Poisson probability distribution

Note: With a discrete probability distribution, each possible value of the discrete random variable can be associated with a non-zero probability. Thus, a discrete probability distribution can always be presented in tabular form.

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FAQs on Discrete probability - Probability and probability Distributions, CSIR-NET Mathematical Sciences - Mathematics for IIT JAM, GATE, CSIR NET, UGC NET

1. What is discrete probability and how is it different from continuous probability?
Ans. Discrete probability deals with random variables that can only take on a countable number of distinct values. It is used when the outcomes of an experiment are finite or countable. On the other hand, continuous probability deals with random variables that can take on any value within a given range. The main difference is that discrete probability assigns probabilities to individual values, while continuous probability assigns probabilities to ranges of values.
2. What is the concept of probability distributions in discrete probability?
Ans. Probability distributions in discrete probability describe the likelihood of each possible outcome of a random variable. It provides a summary of all the possible values and their associated probabilities. In other words, it tells us how likely each value is to occur. Common examples of probability distributions in discrete probability include the binomial distribution, the Poisson distribution, and the geometric distribution.
3. How is probability calculated in discrete probability?
Ans. In discrete probability, the probability of an event is calculated by dividing the number of favorable outcomes by the total number of possible outcomes. This can be represented using the formula P(A) = (Number of favorable outcomes)/(Total number of possible outcomes). The probability of an event can range from 0 to 1, where 0 represents an impossible event and 1 represents a certain event.
4. What are some applications of discrete probability in real life?
Ans. Discrete probability has various applications in real life. Some examples include: - Modeling the number of successes or failures in a fixed number of trials, such as predicting the number of heads in a series of coin tosses. - Estimating the probability of a specific number of customers arriving at a store within a given time frame. - Analyzing the number of defects in a production process and determining the likelihood of different defect counts. - Predicting the number of goals scored by a soccer team in a match based on historical data.
5. How can discrete probability be useful in decision-making and risk analysis?
Ans. Discrete probability allows decision-makers to assess the likelihood of various outcomes and make informed decisions based on the probabilities. It helps in understanding the risks associated with different choices and evaluating the potential consequences. By using techniques like decision trees and expected value calculations, discrete probability enables decision-makers to analyze and compare different options, taking into account the probabilities assigned to each outcome. This can be particularly useful in fields such as finance, insurance, and project management.
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