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Learning Sums of Independent Random Variables with Sparse Collective Support.

Authors :
De, Anindya
Long, Philip M.
Servedio, Rocco A.
Source :
Journal of Machine Learning Research. 2020, Vol. 20, p1-79. 79p.
Publication Year :
2020

Abstract

We study the learnability of sums of independent integer random variables given a bound on the size of the union of their supports. For A⊂Z+, a {sum of independent random variables with collective support A} (called an A-sum in this paper) is a distribution S=X1+⋯+XN where the Xi's are mutually independent (but not necessarily identically distributed) integer random variables with ∪isupp(Xi)⊆A. We give two main algorithmic results for learning such distributions. First, for the case |A|=3, we give an algorithm for learning an unknown A-sum to accuracy ϵ using poly(1/ϵ) samples and running in time poly(1/ϵ), independent of N and of the elements of A. Second, for an arbitrary constant k≥4, if A={a1,...,ak} with 0≤a1<...<ak, we give an algorithm that uses poly(1/ϵ)⋅loglogak samples (independent of N) and runs in time poly(1/ϵ,logak). We prove an essentially matching lower bound: if |A|=4, then any algorithm must use Ω(logloga4) samples even for learning to constant accuracy. We also give similar-in-spirit (but quantitatively very different) algorithmic results, and essentially matching lower bounds, for the case in which A is not known to the learner. Our algorithms and lower bounds together settle the question of how the sample complexity of learning sums of independent integer random variables scales with the elements in the union of their supports, both in the known-support and unknown-support settings. Finally, all our algorithms easily extend to the “semi-agnostic” learning model, in which training data is generated from a distribution that is only cϵ-close to some A-sum for a constant c>0. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15324435
Volume :
20
Database :
Academic Search Index
Journal :
Journal of Machine Learning Research
Publication Type :
Academic Journal
Accession number :
151992180