fullofquestions
New Member
I've looked around and have not found a full answer. The question is as follows:
"A covariance matrix must be positive semi-definite so that:"
- eigenvalues are not negative (this is true)
- portfolio variances are not -
- portfolio variances are not 0
- Cholesky factorization is possible
What are the main implications of a positive semi-definite covariance matrix?
"A covariance matrix must be positive semi-definite so that:"
- eigenvalues are not negative (this is true)
- portfolio variances are not -
- portfolio variances are not 0
- Cholesky factorization is possible
What are the main implications of a positive semi-definite covariance matrix?