Universal Time-Series Forecasting with Mixture Predictors
Format: Print Book
ISBN: 9783030543037
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The author considers the problem of sequential probability forecasting in the most general setting, where the observed data may exhibit an arbitrary form of stochastic dependence. All the results presented are theoretical, but they concern the foundations of some problems in such applied areas as machine learning, information theory and data compression.
Publication Year: 2020
Imprint: Springer International Publishing