LGSCMay 29, 2025

Computational Algebra with Attention: Transformer Oracles for Border Basis Algorithms

arXiv:2505.23696v16 citationsh-index: 29Has Code
Originality Highly original
AI Analysis

This work provides a practical enhancement for computer algebra and symbolic computation, addressing efficiency bottlenecks in traditional methods like Border bases.

The paper tackles the high computational cost of solving polynomial equation systems by introducing the Oracle Border Basis Algorithm, a Deep Learning approach that uses a Transformer-based oracle to eliminate expensive reduction steps, achieving speedups of up to 3.5x while maintaining output correctness.

Solving systems of polynomial equations, particularly those with finitely many solutions, is a crucial challenge across many scientific fields. Traditional methods like Gröbner and Border bases are fundamental but suffer from high computational costs, which have motivated recent Deep Learning approaches to improve efficiency, albeit at the expense of output correctness. In this work, we introduce the Oracle Border Basis Algorithm, the first Deep Learning approach that accelerates Border basis computation while maintaining output guarantees. To this end, we design and train a Transformer-based oracle that identifies and eliminates computationally expensive reduction steps, which we find to dominate the algorithm's runtime. By selectively invoking this oracle during critical phases of computation, we achieve substantial speedup factors of up to 3.5x compared to the base algorithm, without compromising the correctness of results. To generate the training data, we develop a sampling method and provide the first sampling theorem for border bases. We construct a tokenization and embedding scheme tailored to monomial-centered algebraic computations, resulting in a compact and expressive input representation, which reduces the number of tokens to encode an $n$-variate polynomial by a factor of $O(n)$. Our learning approach is data efficient, stable, and a practical enhancement to traditional computer algebra algorithms and symbolic computation.

Code Implementations2 repos
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes