Proposes a finite algorithmics framework and automatic discovery method to solve bounded cases of NP-complete problems more efficiently than their asymptotic versions.
Extracting the Kolmogorov Complexity of Strings and Sequences from Sources with Limited Independence
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abstract
An infinite binary sequence has randomness rate at least $\sigma$ if, for almost every $n$, the Kolmogorov complexity of its prefix of length $n$ is at least $\sigma n$. It is known that for every rational $\sigma \in (0,1)$, on one hand, there exists sequences with randomness rate $\sigma$ that can not be effectively transformed into a sequence with randomness rate higher than $\sigma$ and, on the other hand, any two independent sequences with randomness rate $\sigma$ can be transformed into a sequence with randomness rate higher than $\sigma$. We show that the latter result holds even if the two input sequences have linear dependency (which, informally speaking, means that all prefixes of length $n$ of the two sequences have in common a constant fraction of their information). The similar problem is studied for finite strings. It is shown that from any two strings with sufficiently large Kolmogorov complexity and sufficiently small dependence, one can effectively construct a string that is random even conditioned by any one of the input strings.
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Towards Solving NP-Complete and Other Hard Problems Efficiently in Practice
Proposes a finite algorithmics framework and automatic discovery method to solve bounded cases of NP-complete problems more efficiently than their asymptotic versions.