I have a problem with a vector variable $w \in \mathbb{R}^n$ and a symmetric matrix variable $V \in \mathbb{R^{n \times n}}$. I am solving a problem which is roughly like:
\begin{align} \begin{array}{ll} \max & \sqrt{\operatorname{trace}(A^\top V A)} + a^\top w + \operatorname{entropy}(w) \\ \mathrm{s.t. }& \text{some linear constraints over $w$, and $V$}\\ & V \succeq ww^\top \end{array} \end{align} where by Schur complement the last constraint can be: \begin{align} \begin{pmatrix} V & w \\ w^\top & 1 \end{pmatrix} \succeq 0. \end{align}
So, I have a positive semi-definiteness constraint, some linear constraints, and the function that I am maximizing is concave because the square root of a linear function is concave, as well as the entropy.
I am using YALMIP - MATLAB combination to call a solver. However, MOSEK cannot solve this. I know MOSEK can solve entropy maximization over some conic constraints (exponential cone solver), but this problem is not being able to solve.
Am I using MOSEK wrongly? Would you expect MOSEK to solve this problem? If not, which convex optimization solver shall I try using?