Revisiting the convergence rate of the Lasserre hierarchy for polynomial optimization over the hypercube (2505.00544v1)
Abstract: We revisit the problem of minimizing a given polynomial $f$ on the hypercube $[-1,1]n$. Lasserre's hierarchy (also known as the moment- or sum-of-squares hierarchy) provides a sequence of lower bounds ${f_{(r)}}_{r \in \mathbb N}$ on the minimum value $f*$, where $r$ refers to the allowed degrees in the sum-of-squares hierarchy. A natural question is how fast the hierarchy converges as a function of the parameter $r$. The current state-of-the-art is due to Baldi and Slot [SIAM J. on Applied Algebraic Geometry, 2024] and roughly shows a convergence rate of order $1/r$. Here we obtain closely related results via a different approach: the polynomial kernel method. We also discuss limitations of the polynomial kernel method, suggesting a lower bound of order $1/r2$ for our approach.