Abstract:
In this paper we obtain tight bounds on the space-complexity of computing the ergodic measure of a low-dimensional discrete-time dynamical system affected by Gaussian noise. If the scale of the noise is $\varepsilon$, and the function describing the evolution of the system is not itself a source of computational complexity, then the density function of the ergodic measure can be approximated within precision $\delta$ in space polynomial in $\log 1/\varepsilon+\log\log 1/\delta$. We also show that this bound is tight up to polynomial factors.
In the course of showing the above, we prove a result of independent interest in space-bounded computation: namely, that it is possible to exponentiate an $(n\times n)$-matrix to an exponentially large power in space polylogarithmic in $n$.
Bibliography: 25 titles.