Derandomizing Multivariate Polynomial Factoring for Low Degree Factors
Pranjal Dutta, Amit Sinhababu, and Thomas Thierauf

TL;DR
This paper presents a polynomial-time reduction for finding constant degree irreducible factors of polynomials in certain classes, leveraging polynomial identity tests and divisibility tests, with implications for derandomization and efficient factorization.
Contribution
It introduces a new polynomial-time reduction for factorization problems based on PIT and divisibility tests, improving previous results and clarifying complexity dependencies.
Findings
Polynomial-time reduction for constant degree factors in specific classes.
Derandomization of factorization for sparse polynomials.
Efficient algorithms for factors that are sums of univariate polynomials.
Abstract
For a polynomial from a class of polynomials, we show that the problem to compute all the constant degree irreducible factors of reduces in polynomial time to polynomial identity tests (PIT) for class and divisibility tests of by constant degree polynomials. We apply the result to several classes and obtain the constant degree factors in 1. polynomial time, for being polynomials that have only constant degree factors, 2. quasipolynomial time, for being sparse polynomials, 3. subexponential time, for being polynomials that have constant-depth circuits. Result 2 and 3 were already shown by Kumar, Ramanathan, and Saptharishi with a different proof and their time complexities necessarily depend on black-box PITs for a related bigger class . Our complexities vary on whether…
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Taxonomy
TopicsAdvanced Statistical Methods and Models · Neural Networks and Applications · Polynomial and algebraic computation
