Emergent Mind

Polynomial-Time Power-Sum Decomposition of Polynomials

(2208.00122)
Published Jul 30, 2022 in cs.DS and cs.CC

Abstract

We give efficient algorithms for finding power-sum decomposition of an input polynomial $P(x)= \sum{i\leq m} pi(x)d$ with component $pi$s. The case of linear $pi$s is equivalent to the well-studied tensor decomposition problem while the quadratic case occurs naturally in studying identifiability of non-spherical Gaussian mixtures from low-order moments. Unlike tensor decomposition, both the unique identifiability and algorithms for this problem are not well-understood. For the simplest setting of quadratic $pi$s and $d=3$, prior work of Ge, Huang and Kakade yields an algorithm only when $m \leq \tilde{O}(\sqrt{n})$. On the other hand, the more general recent result of Garg, Kayal and Saha builds an algebraic approach to handle any $m=n{O(1)}$ components but only when $d$ is large enough (while yielding no bounds for $d=3$ or even $d=100$) and only handles an inverse exponential noise. Our results obtain a substantial quantitative improvement on both the prior works above even in the base case of $d=3$ and quadratic $pi$s. Specifically, our algorithm succeeds in decomposing a sum of $m \sim \tilde{O}(n)$ generic quadratic $pi$s for $d=3$ and more generally the $d$th power-sum of $m \sim n{2d/15}$ generic degree-$K$ polynomials for any $K \geq 2$. Our algorithm relies only on basic numerical linear algebraic primitives, is exact (i.e., obtain arbitrarily tiny error up to numerical precision), and handles an inverse polynomial noise when the $pi$s have random Gaussian coefficients. Our main tool is a new method for extracting the linear span of $p_i$s by studying the linear subspace of low-order partial derivatives of the input $P$. For establishing polynomial stability of our algorithm in average-case, we prove inverse polynomial bounds on the smallest singular value of certain correlated random matrices with low-degree polynomial entries that arise in our analyses.

We're not able to analyze this paper right now due to high demand.

Please check back later (sorry!).

Generate a summary of this paper on our Pro plan:

We ran into a problem analyzing this paper.

Newsletter

Get summaries of trending comp sci papers delivered straight to your inbox:

Unsubscribe anytime.