Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
435728 | Theoretical Computer Science | 2010 | 15 Pages |
Abstract
It is an open problem in the area of effective (algorithmic) randomness whether Kolmogorov–Loveland randomness coincides with Martin-Löf randomness. Joe Miller and André Nies suggested some variations of Kolmogorov–Loveland randomness to approach this problem and to provide a partial solution. We show that their proposed notion of injective randomness is still weaker than Martin-Löf randomness. Since in this proof some of the ideas we use are clearer, we also show the weaker theorem that permutation randomness is weaker than Martin-Löf randomness.
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