Conditional Normal Random Distribution
    11 vues (au cours des 30 derniers jours)
  
       Afficher commentaires plus anciens
    
I want to generate a random vector (a) from a normal distribution N(mu,sigma) (mu,sigma:known) with a condition that the first n values of vector 'a' are known and fixed (basically its fulfilling boundary conditions).
Is there any way I can use Multivariate normal random numbers function: R = mvnrnd(mu,Sigma) or any other method? 
0 commentaires
Réponse acceptée
  Paul
      
      
 le 19 Août 2021
        Yes.  If you know mu and Sigma of the vector x and the first n values of x are given, then the density of x(n+1:end) is also normal and can be derived from mu, Sigma, and x(1:n). See this link for the math to get the mean and covariance of x(n+1:end) condtioned on x(1:n), then you can use mvnrnd to generate random numbers of x(n+1:end)
10 commentaires
  Paul
      
      
 le 23 Août 2021
				I didn't provide an example, so I'm still not sure what you've compared to your code.
Instead of reindexing your problem to fit the formula, it's probably easier to modfiy the formula to fit your problem. Just reverse the 1's and 2's.
mubar    = mu2 + Sigma21/Sigma11*(a - mu1);
Sigmabar = Sigma22 - Sigma21/Sigma11*Sigma12;
Feel free to come back if you have any more questions, particularly if you want to post your code with an example. However, if you do, don't use a 10-element vector in the example.  Maybe use a 3-element vector X and show the mubar and Sigmabar of X(3) given known values of X(1) and X(2).
Plus de réponses (0)
Voir également
Catégories
				En savoir plus sur Performance and Memory dans Help Center et File Exchange
			
	Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!



