Equivalences between learning of data and probability distributions, and their applications

January 05, 2018 ยท The Ethereal ยท ๐Ÿ› Information and Computation

๐Ÿ”ฎ THE ETHEREAL: The Ethereal
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Authors George Barmpalias, Nan Fang, Frank Stephan arXiv ID 1801.02566 Category math.LO: Logic Cross-listed cs.IT Citations 2 Venue Information and Computation Last Checked 1 month ago
Abstract
Algorithmic learning theory traditionally studies the learnability of effective infinite binary sequences (reals), while recent work by [Vitanyi and Chater, 2017] and [Bienvenu et al., 2014] has adapted this framework to the study of learnability of effective probability distributions from random data. We prove that for certain families of probability measures that are parametrized by reals, learnability of a subclass of probability measures is equivalent to learnability of the class of the corresponding real parameters. This equivalence allows to transfer results from classical algorithmic theory to learning theory of probability measures. We present a number of such applications, providing many new results regarding EX and BC learnability of classes of measures, thus drawing parallels between the two learning theories.
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