Concentration Phenomenon for Random Dynamical Systems: An Operator Theoretic Approach

Abstract

Via operator theoretic methods, we formalize the concentration phenomenon for a given observable ‘$r$’ of a discrete time Markov chain with ‘$\mu_{\pi}$’ as invariant ergodic measure, possibly having support on an unbounded state space. The main contribution of this paper is circumventing tedious probabilistic methods with a study of a composition of the Markov transition operator $P$ followed by a multiplication operator defined by $e^{r}$. It turns out that even if the observable/ reward function is unbounded, but for some for some $q>2$, $\|e^{r}\|_{q \rightarrow 2} \propto \exp\big(\mu_{\pi}(r) +\frac{2q}{q-2}\big) $ and $P$ is hyperbounded with norm control $\|P\|_{2 \rightarrow q }< e^{\frac{1}{2}[\frac{1}{2}-\frac{1}{q}]}$, sharp non-asymptotic concentration bounds follow. \emph{Transport-entropy} inequality ensures the aforementioned upper bound on multiplication operator for all $q>2$. The role of \emph{reversibility} in concentration phenomenon is demystified. These results are particularly useful for the reinforcement learning and controls communities as they allow for concentration inequalities w.r.t standard unbounded obersvables/reward functions where exact knowledge of the system is not available, let alone the reversibility of stationary measure.

Cite

Text

Naeem. "Concentration Phenomenon for Random Dynamical Systems:  An Operator Theoretic Approach." Proceedings of The 5th Annual Learning for Dynamics and Control Conference, 2023.

Markdown

[Naeem. "Concentration Phenomenon for Random Dynamical Systems:  An Operator Theoretic Approach." Proceedings of The 5th Annual Learning for Dynamics and Control Conference, 2023.](https://mlanthology.org/l4dc/2023/naeem2023l4dc-concentration/)

BibTeX

@inproceedings{naeem2023l4dc-concentration,
  title     = {{Concentration Phenomenon for Random Dynamical Systems:  An Operator Theoretic Approach}},
  author    = {Naeem, Muhammad Abdullah},
  booktitle = {Proceedings of The 5th Annual Learning for Dynamics and Control Conference},
  year      = {2023},
  pages     = {383-394},
  volume    = {211},
  url       = {https://mlanthology.org/l4dc/2023/naeem2023l4dc-concentration/}
}