Given correlation matrix $B$ (positive semi-definite with ones in the diagonal).
1)Find the correlation matrix $A$ which maximizes $\det\left(A+B\right)$.
2)Find the correlation matrix $A$ which minimizes $\det\left(A+B\right)$
Given correlation matrix $B$ (positive semi-definite with ones in the diagonal).
1)Find the correlation matrix $A$ which maximizes $\det\left(A+B\right)$.
2)Find the correlation matrix $A$ which minimizes $\det\left(A+B\right)$
I assume that what the OP wanted to say was, given a correlation matrix $B$, find a correlation matrix $A$ that maximizes $\det(A+B)$. Let me cite here a more general theorem that paves the way to a solution.
Theorem Let $A$ and $B$ be Hermitian matrices with eigenvalues $a_1,\ldots,a_n$ and $b_1,\ldots,b_n$, respectively. Then,
\begin{equation*} \det(A+B) \le \max_{\sigma \in \mathfrak{S}_n}\prod_{i=1}^n (a_i + b_{\sigma(i)}). \end{equation*}
Since correlation matrices are Hermitian positive semidefinite, a specialization of this theorem shows us that \begin{equation*} \det(A+B) \le \prod_{i=1}^n (\lambda_i(A) + \lambda_{n-i+1}(B)), \end{equation*} where $\lambda_i(\cdot)$ is the $i$-largest eigenvalue. Thus, in particular, for a fixed $B$, we just need to pick a suitable $A$ that has the same eigenvectors as $B$ (in permuted order, however), but has the largest possible allowable eigenvalues.
EDIT It is not immediate, if these eigenvalues can be easily obtained in closed form. It seems that in some cases the optimum solution can be obtained by setting \begin{equation*} a_{ij} = \begin{cases} -b_{ij} & i \neq j,\\ 1 & i = j \end{cases}. \end{equation*} In this case, $A+B = 2I_n$. But in general, as noted by the OP in the comments below, this construction does not always work. I am still hoping to be able to get a solution more easily than solving an SDP, but at this point it is not clear whether I can do better than solving an SDP (for the maximization problem).