Showing posts with label Conditional probability density function. Show all posts
Showing posts with label Conditional probability density function. Show all posts

30 Dec 2018

Conditional Probability Density Function (Conditional PDF) - Properties of Conditional PDF with Derivation

What is Conditional Probability Density Function (Conditional PDF)?

A probability density function is known as conditional PDF, when one random variable out of two random variables has a fixed value. Here suppose we have two random variables X and Y, and X has a fixed value equal to x. 
In this case in the conditional PDF of Y when X=x is given as-



In the same way, Conditional PDF of X when random variable Y takes a fixed value Y=y is given as-



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Properties of Conditional Probability Density Function (Conditional PDF)


Property 1- Conditional PDF is a non-negative function.



As conditional PDF is a ratio of two PDFs and we know that PDF is a non-negative function. Therefore the ratio of two non-negative PDFs is also non- negative function.

Property 2- Area under the conditional PDF is unity i.e. one.
This property mathematically can be expressed as-



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Property 3- Conditional probability density function (conditional PDF) reduces to marginal density if random variables X and Y are statistically independent.




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Probability Density Function (PDF) - Definition, Basics and Properties of Probability Density Function (PDF) with Derivation and Proof