English

Extended Hardness Results for Approximate Gr\"obner Basis Computation

Symbolic Computation 2018-07-18 v1

Abstract

Two models were recently proposed to explore the robust hardness of Gr\"obner basis computation. Given a polynomial system, both models allow an algorithm to selectively ignore some of the polynomials: the algorithm is only responsible for returning a Gr\"obner basis for the ideal generated by the remaining polynomials. For the qq-Fractional Gr\"obner Basis Problem the algorithm is allowed to ignore a constant (1q)(1-q)-fraction of the polynomials (subject to one natural structural constraint). Here we prove a new strongest-parameter result: even if the algorithm is allowed to choose a (3/10ϵ)(3/10-\epsilon)-fraction of the polynomials to ignore, and need only compute a Gr\"obner basis with respect to some lexicographic order for the remaining polynomials, this cannot be accomplished in polynomial time (unless P=NPP=NP). This statement holds even if every polynomial has maximum degree 3. Next, we prove the first robust hardness result for polynomial systems of maximum degree 2: for the qq-Fractional model a (1/5ϵ)(1/5-\epsilon) fraction of the polynomials may be ignored without losing provable NP-Hardness. Both theorems hold even if every polynomial contains at most three distinct variables. Finally, for the Strong cc-partial Gr\"obner Basis Problem of De Loera et al. we give conditional results that depend on famous (unresolved) conjectures of Khot and Dinur, et al.

Keywords

Cite

@article{arxiv.1605.04472,
  title  = {Extended Hardness Results for Approximate Gr\"obner Basis Computation},
  author = {Gwen Spencer},
  journal= {arXiv preprint arXiv:1605.04472},
  year   = {2018}
}

Comments

23 pages. arXiv admin note: text overlap with arXiv:1511.06436

R2 v1 2026-06-22T14:00:53.869Z