Optimal Coding Theorems in Time-Bounded Kolmogorov Complexity
Zhenjian Lu, Igor C. Oliveira, and Marius Zimand

TL;DR
This paper advances the understanding of time-bounded Kolmogorov complexity by establishing a near-optimal coding theorem for randomized complexity measures, highlighting fundamental limits under cryptographic assumptions and exploring variants with fixed time bounds.
Contribution
It proves a coding theorem for rKt with a factor of 2, and shows the limits of efficient coding theorems under cryptographic assumptions, also analyzing pK^t complexity.
Findings
Established a 2-factor optimal coding theorem for rKt complexity.
Proved no efficient coding theorem can surpass a (2 - o(1)) factor under cryptographic assumptions.
Demonstrated an optimal coding theorem for pK^t complexity and its implications.
Abstract
The classical coding theorem in Kolmogorov complexity states that if an -bit string is sampled with probability by an algorithm with prefix-free domain then K. In a recent work, Lu and Oliveira [LO21] established an unconditional time-bounded version of this result, by showing that if can be efficiently sampled with probability then rKt, where rKt denotes the randomized analogue of Levin's Kt complexity. Unfortunately, this result is often insufficient when transferring applications of the classical coding theorem to the time-bounded setting, as it achieves a bound instead of the information-theoretic optimal . We show a coding theorem for rKt with a factor of . As in previous work, our coding theorem is efficient in the sense that it provides a…
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