Algorithmic Information Forecastability
Glauco Amigo, Daniel Andrés Díaz-Pachón, Robert J. Marks, Charles Baylis
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The outcome of all time series cannot be forecast, e.g. the flipping of a fair coin. Others, like the repeated 01 sequence 010101... can be forecast exactly. Algorithmic information theory can provide a measure of forecastability that lies between these extremes. The degree of forecastability is a function of only the data. For prediction (or classification) of labeled data, we propose three categories for forecastability: oracle forecastability for predictions that are always exact, precise forecastability for errors up to a bound, and probabilistic forecastability for any other predictions. Examples are given in each case.