1 research outputs found
Sparse multivariate polynomial interpolation in the basis of Schubert polynomials
Schubert polynomials were discovered by A. Lascoux and M. Sch\"utzenberger in
the study of cohomology rings of flag manifolds in 1980's. These polynomials
generalize Schur polynomials, and form a linear basis of multivariate
polynomials. In 2003, Lenart and Sottile introduced skew Schubert polynomials,
which generalize skew Schur polynomials, and expand in the Schubert basis with
the generalized Littlewood-Richardson coefficients.
In this paper we initiate the study of these two families of polynomials from
the perspective of computational complexity theory. We first observe that skew
Schubert polynomials, and therefore Schubert polynomials, are in \CountP
(when evaluating on non-negative integral inputs) and \VNP.
Our main result is a deterministic algorithm that computes the expansion of a
polynomial of degree in in the basis of Schubert
polynomials, assuming an oracle computing Schubert polynomials. This algorithm
runs in time polynomial in , , and the bit size of the expansion. This
generalizes, and derandomizes, the sparse interpolation algorithm of symmetric
polynomials in the Schur basis by Barvinok and Fomin (Advances in Applied
Mathematics, 18(3):271--285). In fact, our interpolation algorithm is general
enough to accommodate any linear basis satisfying certain natural properties.
Applications of the above results include a new algorithm that computes the
generalized Littlewood-Richardson coefficients.Comment: 20 pages; some typos correcte