A Chaotic Probability model is a usual set of probability measures, M, the totality of which is endowed with an objective, frequentist interpretation as opposed to being viewed as a statistical compound hypothesis or an imprecise behavioral subjective one. In the prior work of Fierens and Fine, given nite time series data, the estimation of the Chaotic Probability model is based on the analysis of a set of relative frequencies of events taken along a set of subsequences selected by a set of rules. Fierens and Fine proved the existence of families of causal subsequence selection rules that can make M visible, but they did not provide a methodology for nding such family. This paper provides a universal methodology for nding a family of subsequences that can make M visible such that relative frequencies taken along such subsequences are provably close enough to a measure in M with high probability. Keywords. Imprecise Probabilities, Foundations of Probability, Church Place Selection R...
Leandro Chaves Rêgo, Terrence L. Fine