“…Randomness characterization through Bayesian model selection has some clear and natural advantages, as already pointed out in [16], but, unfortunately, it has an important drawback: the number of all possible models for a given length i, given by B 2 i , grows supra-exponentially with i: indeed, for i = 1, we have two possible models, for i = 2, we have 15 possible models, for i = 3, we have instead 4140 possible models, while, for i = 4, we have 10,480,142,147 models. Thus, even if we are able to acquire data for the evaluation of these many models, it becomes computationally impractical to estimate the posterior for all of them using Equation (2).…”