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Learning sums of powers of low-degree polynomials in the non-degenerate case

15 April 2020
A. Garg
N. Kayal
Chandan Saha
ArXiv (abs)PDFHTML
Abstract

We develop algorithms for writing a polynomial as sums of powers of low degree polynomials. Consider an nnn-variate degree-ddd polynomial fff which can be written as f = c_1Q_1^{m} + \ldots + c_s Q_s^{m}, where each ci∈F×c_i\in \mathbb{F}^{\times}ci​∈F×, QiQ_iQi​ is a homogeneous polynomial of degree ttt, and tm=dt m = dtm=d. In this paper, we give a poly((ns)t)\text{poly}((ns)^t)poly((ns)t)-time learning algorithm for finding the QiQ_iQi​'s given (black-box access to) fff, if the Qi′sQ_i'sQi′​s satisfy certain non-degeneracy conditions and nnn is larger than d2d^2d2. The set of degenerate QiQ_iQi​'s (i.e., inputs for which the algorithm does not work) form a non-trivial variety and hence if the QiQ_iQi​'s are chosen according to any reasonable (full-dimensional) distribution, then they are non-degenerate with high probability (if sss is not too large). Our algorithm is based on a scheme for obtaining a learning algorithm for an arithmetic circuit model from a lower bound for the same model, provided certain non-degeneracy conditions hold. The scheme reduces the learning problem to the problem of decomposing two vector spaces under the action of a set of linear operators, where the spaces and the operators are derived from the input circuit and the complexity measure used in a typical lower bound proof. The non-degeneracy conditions are certain restrictions on how the spaces decompose.

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