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= Bivariate Normal =
= Bivariate Normal =
[[File:Bivariate Normal Example Scatterplot.png|thumb|Scatterplots of bivariate normal distribution]]
 
The '''bivariate normal''' is one special type of continuous random
The '''bivariate normal''' (aka. bivariate gaussian) is one special type
variable.
of continuous random variable.
 
<math>(X, Y)</math> is ''bivariate normal'' if
 
# The marginal PDF of both X and Y are normal
# For any <math>x</math>, the condition PDF of <math>Y</math> given <math>X = x</math> is Normal
** Works the other way around: Bivariate gaussian means that condition is satisfied
 
== Predicting Y given X ==
 
Given bivariate normal, we can predict one variable given another.
Let us try estimating the expected Y given X is x
 
<math>
E(Y| X = x)
</math>
 
There are three main methods
* Scatter plot approximation
* Joint PDF
* 5 statistics
 
=== 5 Parameters ===
 
We need to know 5 parameters about <math>X</math> and <math>Y</math>
 
<math>E(X), sd(X), E(Y), sd(Y), \rho</math>
 
If <math>X, Y</math> follows bivariatte normal distribution, then we
have
 
<math>
\left( \frac{E(Y|X = x) - E(Y)}{sd(Y)} \right) = \rho \left( \frac{x -
E(X)}{sd(X)} \right)
</math>

Revision as of 17:57, 18 March 2024

Consider two numerica random variables and . We can measure their covariance.

The correlation of two random variables measures the line dependent between and

Bivariate Normal

The bivariate normal (aka. bivariate gaussian) is one special type of continuous random variable.

is bivariate normal if

  1. The marginal PDF of both X and Y are normal
  2. For any , the condition PDF of given is Normal
    • Works the other way around: Bivariate gaussian means that condition is satisfied

Predicting Y given X

Given bivariate normal, we can predict one variable given another. Let us try estimating the expected Y given X is x

There are three main methods

  • Scatter plot approximation
  • Joint PDF
  • 5 statistics

5 Parameters

We need to know 5 parameters about and

If follows bivariatte normal distribution, then we have