Publication | Closed Access
Universal prediction
452
Citations
89
References
1998
Year
Artificial IntelligenceUniversal Prediction ProblemEngineeringMachine LearningData ScienceUniversal PredictionUncertainty QuantificationEntropyInformation TheoryComputational Learning TheoryProbability TheoryComputer ScienceStatistical Learning TheoryAlgorithmic Information TheoryKolmogorov ComplexityUniversal Data Compression
This paper consists of an overview on universal prediction from an information-theoretic perspective. Special attention is given to the notion of probability assignment under the self-information loss function, which is directly related to the theory of universal data compression. Both the probabilistic setting and the deterministic setting of the universal prediction problem are described with emphasis on the analogy and the differences between results in the two settings.
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