Sequential predictions based on algorithmic complexity
Date
2006-02
Authors
Hutter, Marcus
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Publisher
Elsevier
Abstract
This paper studies sequence prediction based on the monotone Kolmogorov complexity Km = − log m, i.e.
based on universal deterministic/one-part MDL. m is extremely close to Solomonoff’s universal prior M, the latter
being an excellent predictor in deterministic as well as probabilistic environments, where performance is measured
in terms of convergence of posteriors or losses. Despite this closeness to M, it is difficult to assess the prediction
quality of m, since little is known about the closeness of their posteriors, which are the important quantities for
prediction. We show that for deterministic computable environments, the “posterior” and losses of m converge, but
rapid convergence could only be shown on-sequence; the off-sequence convergence can be slow. In probabilistic
environments, neither the posterior nor the losses converge, in general.
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Source
Journal of Computer and System Sciences
Type
Journal article
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Access Statement
Open Access
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Creative Commons Attribution licence