Let $\mathbf{A}_i \in \mathbb{R}^{d \times d}$ ($i = 1, \dots, T$) be symmetric positive semidefinite (PSD) matrices. Define the quantity
$$ m = \frac{\lambda_{\max}\left(\sum_{i=1}^T \mathbf{A}_i^2\right)}{\lambda_{\max}\left(\sum_{i=1}^T \mathbf{A}_i \otimes \mathbf{A}_i\right)}, $$
where $\otimes$ denotes the Kronecker product, and $\lambda_{\max}(\cdot)$ is the largest eigenvalue of a matrix.
Questions:
- What is a tight upper bound on $m$?
- Does this bound depend on $d$ and/or $T$, or is $m$ universally bounded by a constant independent of $d$ and $T$?
Observations:
- It is straightforward to show that $m \geq 1$.
- Numerical experiments suggest that $m$ is typically small. For example, I found cases where $m \approx 1.3$, but I couldn't construct any examples where $m > 1.3$.
I am particularly interested in whether $m$ is always bounded above by some constant that does not depend on $d$ or $T$. Any insights, references, or proof sketches would be greatly appreciated!