Skip to Main content Skip to Navigation

Homotopy algorithms for solving structured determinantal systems

Abstract : Multivariate polynomial systems arising in numerous applications have special structures. In particular, determinantal structures and invariant systems appear in a wide range of applications such as in polynomial optimization and related questions in real algebraic geometry. The goal of this thesis is to provide efficient algorithms to solve such structured systems. In order to solve the first kind of systems, we design efficient algorithms by using the symbolic homotopy continuation techniques. While the homotopy methods, in both numeric and symbolic, are well-understood and widely used in polynomial system solving for square systems, the use of these methods to solve over-detemined systems is not so clear. Meanwhile, determinantal systems are over-determined with more equations than unknowns. We provide probabilistic homotopy algorithms which take advantage of the determinantal structure to compute isolated points in the zero-sets of determinantal systems. The runtimes of our algorithms are polynomial in the sum of the multiplicities of isolated points and the degree of the homotopy curve. We also give the bounds on the number of isolated points that we have to compute in three contexts: all entries of the input are in classical polynomial rings, all these polynomials are sparse, and they are weighted polynomials. In the second half of the thesis, we deal with the problem of finding critical points of a symmetric polynomial map on an invariant algebraic set. We exploit the invariance properties of the input to split the solution space according to the orbits of the symmetric group. This allows us to design an algorithm which gives a triangular description of the solution space and which runs in time polynomial in the number of points that we have to compute. Our results are illustrated by applications in studying real algebraic sets defined by invariant polynomial systems by the means of the critical point method.
Document type :
Complete list of metadata
Contributor : Thi Xuan Vu Connect in order to contact the contributor
Submitted on : Tuesday, January 5, 2021 - 7:15:34 PM
Last modification on : Friday, September 16, 2022 - 3:56:31 PM
Long-term archiving on: : Wednesday, April 7, 2021 - 9:23:15 AM


Files produced by the author(s)


  • HAL Id : tel-03098694, version 1


Thi Xuan Vu. Homotopy algorithms for solving structured determinantal systems. Computer Science [cs]. Sorbonne Université (France); University of Waterloo (Canada), 2020. English. ⟨tel-03098694⟩



Record views


Files downloads