Convergence Thresholds of Newton's Method for Monotone Polynomial Equations
Abstract
Monotone systems of polynomial equations (MSPEs) are systems of fixed-point equations where each is a polynomial with positive real coefficients. The question of computing the least non-negative solution of a given MSPE arises naturally in the analysis of stochastic models such as stochastic context-free grammars, probabilistic pushdown automata, and back-button processes. Etessami and Yannakakis have recently adapted Newton's iterative method to MSPEs. In a previous paper we have proved the existence of a threshold for strongly connected MSPEs, such that after iterations of Newton's method each new iteration computes at least 1 new bit of the solution. However, the proof was purely existential. In this paper we give an upper bound for as a function of the minimal component of the least fixed-point of . Using this result we show that is at most single exponential resp. linear for strongly connected MSPEs derived from probabilistic pushdown automata resp. from back-button processes. Further, we prove the existence of a threshold for arbitrary MSPEs after which each new iteration computes at least new bits of the solution, where and are the width and height of the DAG of strongly connected components.
Cite
@article{arxiv.0802.2856,
title = {Convergence Thresholds of Newton's Method for Monotone Polynomial Equations},
author = {Javier Esparza and Stefan Kiefer and Michael Luttenberger},
journal= {arXiv preprint arXiv:0802.2856},
year = {2008}
}
Comments
version 2 deposited February 29, after the end of the STACS conference. Two minor mistakes corrected