![]() |
Cumulative Distribution Function or CDF and the Probability Density Function or PDF are important in statistics when dealing with continuous random variables. While both functions provide insights into probabilities, they have different purposes and give different perspectives on the distribution of data. In this article we will discuss about the difference between Cumulative Distribution Function and the Probability Density Function in detail. ![]() Table of Content What is a PDF?PDF stands for Probability Density Function. It is an important concept in statistics for understanding probabilities related to continuous random variables. It is a smooth curve that shows how likely different outcomes are within a range of values. For example, consider the temperature in a city on a given day. The PDF could show the likelihood of temperatures falling within certain ranges, like between 70°F and 80°F. PDF does not give the probability of specific values, but rather the probability of the variable falling within a small interval around a particular value. The area under the PDF curve for a range of values represents the probability of the variable falling within that range. To find the probability of a single value, it requires to calculate the integral of the PDF at that point, which means finding the area under the curve at that specific value. What is a CDF?CDF stands for cumulative distribution function. The CDF complements the Probability Density Function and provides a cumulative view of the probabilities linked to a random variable. Unlike the smooth curve of the PDF, the CDF appears as a step function, jumping at specific values. It shows the probability that a random variable will be less than or equal to a given value. Starting from 0 for negative values, the CDF gradually increases to 1 as the value of the random variable increases. For discrete random variables, the CDF rises in steps, corresponding to the probabilities of each possible outcome. With continuous random variables, it increases smoothly and reflects the combined probabilities across different intervals. Difference Between CDF and PDFThe difference between CDF and PDF can be understood from the table given below.
Relation Between PDF and CDFThe relationship between CDF and PDF is described below:
Mathematically, the relationship between the PDF and CDF is as follows:
Read More,
FAQs on Difference between CDF and PDFWhat is the difference between the CDF and PDF?
What is the relationship between CDF and PDF?
What does CDF stand for?
What are the properties of CDF?
Can CDF be greater than 1?
Can a PDF be 0?
|
Reffered: https://www.geeksforgeeks.org
Mathematics |
Type: | Geek |
Category: | Coding |
Sub Category: | Tutorial |
Uploaded by: | Admin |
Views: | 12 |