subject
Mathematics, 14.02.2020 16:06 alexialoredo625

Recall the covariance of two random variables X and Y is defined as Cov(X, Y) = E[(X − E[X])(Y − E[Y])]. For a multivariate random variable Z (i. e., each index of Z is a random variable), we define the covariance matrix Σ such that Σi j = Cov(Zi , Zj). Concisely, Σ = E[(Z − µ)(Z − µ) > ], where µ is the mean value of the random column vector Z. Prove that the covariance matrix is always positive semidefinite (PSD).

ansver
Answers: 3

Another question on Mathematics

question
Mathematics, 20.06.2019 18:04
Achef will make pizzas. he has broccoli, peppers, onions, pepperoni, and sausage. how many types of vegetable and one type of meat?
Answers: 1
question
Mathematics, 21.06.2019 17:30
Using the side-splitter theorem, daniel wrote a proportion for the segment formed by luke segment de. what is ec?
Answers: 3
question
Mathematics, 21.06.2019 18:00
What can you determine about the solutions of this system
Answers: 1
question
Mathematics, 22.06.2019 00:00
The graph shows the amount of money noah earned based on the number of lawns he cut. which list shows the dependent quantities in the graph?
Answers: 3
You know the right answer?
Recall the covariance of two random variables X and Y is defined as Cov(X, Y) = E[(X − E[X])(Y − E[Y...
Questions
question
Advanced Placement (AP), 02.06.2021 15:20
question
English, 02.06.2021 15:20
question
Biology, 02.06.2021 15:20
question
English, 02.06.2021 15:20
question
Mathematics, 02.06.2021 15:20
Questions on the website: 13722363