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Frobenius Norm and Relation to Eigenvalues

Mathematics Asked by 100001 on December 23, 2021

I’ve been working on this problem, and I think that I almost have the solution, but I’m not quite there.

Suppose that $A in M_n(mathbb C)$ has $n$ distinct eigenvalues $lambda_1… lambda_n$. Show that $$sqrt{sum _{j=1}^{n} left | {lambda_j} right |^2 } leq left | A right |_F,.$$

I tried using the Schur decomposition of $A$ and got that $left | A right |_F = sqrt{TT^*}$, where $A=QTQ^*$ with $Q$ unitary and $T$ triangular, but I’m not sure how to relate this back to eigenvalues and where the inequality comes from.

One Answer

You are in the right way. The corresponding Schur decomposition is $A = Q U Q^*$, where $Q$ is unitary and $U$ is an upper triangular matrix, whose diagonal corresponds to the set of eigenvalues of $A$ (because $A$ and $U$ are similar). Now because Frobenius norm is invariant under unitary matrix multiplication:

$$||QA||_F = sqrt{text{tr}((QA)^*(QA))} = sqrt{text{tr}(A^*Q^* QA)} = sqrt{text{tr}(A^*A)} = ||A||_F$$

(the same remains for multiplication of $Q$ on the right) then we could write: $$||A||_F = ||Q U Q^*||_F = ||U||_F rightarrow sqrt{sum_{j=1}^n |lambda_j|^2} leq ||A||_F$$

directly proves your statement.

Note: The inequality comes from the definition of the Frobenius norm: The sum of the square of all entries in the matrix. Since $U$ contains the eigenvalues on his diagonal, the term in the left has to be less or equal to the sum over all entries, because $U$ could have non zero entries over his diagonal.

Answered by mavillan on December 23, 2021

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