Sublinear-Time Probabilistic Cellular Automata
Augusto Modanese

TL;DR
This paper introduces probabilistic cellular automata (PACA), analyzes their computational power in sublinear time, and establishes bounds and derandomization results, revealing the relationship between probabilistic and deterministic models in this setting.
Contribution
It provides a comprehensive characterization of constant-time PACA classes, showing full derandomization for one-sided error and bounding two-sided error classes between known language classes.
Findings
Constant-time one-sided error PACAs can be fully derandomized.
Two-sided error PACAs recognize languages between $ extsf{LLT}$ and $ extsf{LTT}$ classes.
Derandomization of PACAs implies major complexity class collapses.
Abstract
We propose and investigate a probabilistic model of sublinear-time one-dimensional cellular automata. In particular, we modify the model of ACA (which are cellular automata that accept if and only if all cells simultaneously accept) so that every cell changes its state not only dependent on the states it sees in its neighborhood but also on an unbiased coin toss of its own. The resulting model is dubbed probabilistic ACA (PACA). We consider one- and two-sided error versions of the model (in the same spirit as the classes and ) and establish a separation between the classes of languages they can recognize all the way up to time. As a consequence, we have a lower bound for derandomizing constant-time two-sided error PACAs (using deterministic ACAs). We also prove that derandomization of -time PACAs (to polynomial-time…
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