Using Sums-of-Squares to Prove Gaussian Product Inequalities (2205.02127v4)
Abstract: The long-standing Gaussian product inequality (GPI) conjecture states that $E [\prod_{j=1}{n}X_j{2m_j}]\geq\prod_{j=1}{n}E[X_j{2m_j}]$ for any centered Gaussian random vector $(X_1,\dots,X_n)$ and $m_1,\dots,m_n\in\mathbb{N}$. In this paper, we describe a computational algorithm involving sums-of-squares representations of multivariate polynomials that can be used to resolve the GPI conjecture. To exhibit the power of this novel method, we apply it to prove two new GPIs: $E[X_1{2m_1}X_2{6}X_3{4}]\ge E[X_1{2m_1}]E[X_2{6}]E[X_3{4}]$ and $E[X_1{2m_1}X_2{2}X_3{2}X_4{2}]\ge E[X_1{2m_1}]E[X_2{2}]E[X_3{2}]E[X_4{2}]$.
Collections
Sign up for free to add this paper to one or more collections.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.