Machine learning detects terminal singularities
Tom Coates, Alexander M. Kasprzyk, Sara Veneziale

TL;DR
This paper demonstrates that machine learning can effectively classify 8-dimensional Q-Fano algebraic varieties with toric symmetry and Picard rank 2, revealing insights into their structure and aiding mathematical conjectures.
Contribution
It introduces a neural network classifier achieving 95% accuracy for Q-Fano varieties and formulates a new combinatorial criterion for terminal singularities.
Findings
Neural network predicts Q-Fano varieties with high accuracy
Classification visualized within a bounded region using quantum period
Formulation and proof of a new combinatorial criterion
Abstract
Algebraic varieties are the geometric shapes defined by systems of polynomial equations; they are ubiquitous across mathematics and science. Amongst these algebraic varieties are Q-Fano varieties: positively curved shapes which have Q-factorial terminal singularities. Q-Fano varieties are of fundamental importance in geometry as they are "atomic pieces" of more complex shapes - the process of breaking a shape into simpler pieces in this sense is called the Minimal Model Programme. Despite their importance, the classification of Q-Fano varieties remains unknown. In this paper we demonstrate that machine learning can be used to understand this classification. We focus on 8-dimensional positively-curved algebraic varieties that have toric symmetry and Picard rank 2, and develop a neural network classifier that predicts with 95% accuracy whether or not such an algebraic variety is Q-Fano.…
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Taxonomy
TopicsAlgebraic Geometry and Number Theory · Commutative Algebra and Its Applications · Polynomial and algebraic computation
