Learning Read-Once Determinants and the Principal Minor Assignment Problem
Abhiram Aravind, Abhranil Chatterjee, Sumanta Ghosh, Rohit Gurjar, Roshan Raj, Chandan Saha

TL;DR
This paper presents a randomized polynomial-time algorithm for learning read-once determinants (RODs) and solving the principal minor assignment problem (PMAP) in a black-box setting, connecting these problems through matrix properties.
Contribution
It introduces a polynomial-time randomized algorithm for learning RODs and solving black-box PMAP, establishing their equivalence and exploring matrix properties like the rank-one extension property.
Findings
Black-box PMAP can be solved in randomized polynomial time.
Learning RODs is equivalent to solving black-box PMAP.
The rank-one extension property is key to the solution.
Abstract
A symbolic determinant under rank-one restriction computes a polynomial of the form , where are square matrices over a field and for each . This class of polynomials has been studied extensively, since the work of Edmonds (1967), in the context of linear matroids, matching, matrix completion and polynomial identity testing. We study the following learning problem for this class: Given black-box access to an -variate polynomial , where are unknown square matrices over and rank for each , find a square matrix and rank-one square matrices over such that . In this work, we give a randomized poly(n) time algorithm to solve this problem. As the…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Machine Learning and Algorithms · Markov Chains and Monte Carlo Methods
