Publication | Open Access
Optimal Markov approximations and generalized embeddings
16
Citations
14
References
2009
Year
EngineeringMachine LearningProbabilistic ForecastingData ScienceUncertainty QuantificationHidden Markov ModelManagementApproximation TheoryStatisticsNonlinear Time SeriesPrediction ModellingOptimal Markov ApproximationPoint PredictionInformation TheoryPredictive AnalyticsProbability TheoryComputer ScienceForecastingStatistical Learning TheoryOptimal Markov ApproximationsStochastic OptimizationEntropyMarkov KernelStatistical Inference
Based on information theory, we present a method to determine an optimal Markov approximation for modeling and prediction from time series data. The method finds a balance between minimal modeling errors by taking as much as possible memory into account and minimal statistical errors by working in embedding spaces of rather small dimension. A key ingredient is an estimate of the statistical error of entropy estimates. The method is illustrated with several examples, and the consequences for prediction are evaluated by means of the root-mean-squared prediction error for point prediction.
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