Absolutely No Free Lunches!

05/10/2020
by   Gordon Belot, et al.
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This paper is concerned with learners who aim to learn patterns in infinite binary sequences: shown longer and longer initial segments of a binary sequence, they either attempt to predict whether the next bit will be a 0 or will be a 1 or they issue forecast probabilities for these events. Several variants of this problem are considered. In each case, a no-free-lunch result of the following form is established: the problem of learning is a formidably difficult one, in that no matter what method is pursued, failure is incomparably more common that success; and difficult choices must be faced in choosing a method of learning, since no approach dominates all others in its range of success. In the simplest case, the comparison of the set of situations in which a method fails and the set of situations in which it succeeds is a matter of cardinality; in other cases, it is a topological matter (meagre vs. co-meagre), or a hybrid computational-topological matter (effectively meagre vs. effectively co-meagre, in the sense of Mehlhorn (1973)).

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