arXiv:2302.08127 [math.FA]AbstractReferencesReviewsResources
Matrix Inequalities between $f(A)σf(B)$ and $AσB$
Manisha Devi, Jaspal Singh Aujla, Mohsen Kian, Mohammad Sal Moslehian
Published 2023-02-16Version 1
Let $A$ and $ B$ be $n\times n$ positive definite complex matrices, let $\sigma$ be a matrix mean, and let $f : [0,\infty)\to [0,\infty)$ be a differentiable convex function with $f(0)=0$. We prove that $$f^{\prime}(0)(A \sigma B)\leq \frac{f(m)}{m}(A\sigma B)\leq f(A)\sigma f(B)\leq \frac{f(M)}{M}(A\sigma B)\leq f^{\prime}(M)(A\sigma B),$$ where $m$ is the smallest among eigenvalues of $A$ and $B$ and $M$ is the largest among eigenvalues of $A$ and $B$. If $f$ is differentiable concave, then the reverse inequalities hold. We use our result to improve some known subadditivity inequalities involving unitarily invariant norms under some mild conditions. In particular, if $f(x)/x$ is increasing, then $$|||f(A)+f(B)|||\leq\frac{f(M)}{M} |||A+B|||\leq |||f(A+B)|||$$ holds for all $A$ and $B$ with $M\leq A+B$. Furthermore, we apply our results to explore some related inequalities. As an application, we present a generalization of Minkowski's determinant inequality.