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Comparing machine learning models to choose the variable ordering for
  cylindrical algebraic decomposition
v1v2 (latest)

Comparing machine learning models to choose the variable ordering for cylindrical algebraic decomposition

24 April 2019
Matthew England
Dorian Florescu
ArXiv (abs)PDFHTML

Papers citing "Comparing machine learning models to choose the variable ordering for cylindrical algebraic decomposition"

8 / 8 papers shown
Title
Constrained Neural Networks for Interpretable Heuristic Creation to
  Optimise Computer Algebra Systems
Constrained Neural Networks for Interpretable Heuristic Creation to Optimise Computer Algebra Systems
Dorian Florescu
Matthew England
39
1
0
26 Apr 2024
Lessons on Datasets and Paradigms in Machine Learning for Symbolic
  Computation: A Case Study on CAD
Lessons on Datasets and Paradigms in Machine Learning for Symbolic Computation: A Case Study on CAD
Tereso del Río
Matthew England
42
1
0
24 Jan 2024
Data Augmentation for Mathematical Objects
Data Augmentation for Mathematical Objects
Tereso Del Rio Almajano
Matthew England
31
4
0
13 Jul 2023
Explainable AI Insights for Symbolic Computation: A case study on
  selecting the variable ordering for cylindrical algebraic decomposition
Explainable AI Insights for Symbolic Computation: A case study on selecting the variable ordering for cylindrical algebraic decomposition
Lynn Pickering
Tereso Del Rio Almajano
Matthew England
Kelly Cohen
42
13
0
24 Apr 2023
Revisiting Variable Ordering for Real Quantifier Elimination using
  Machine Learning
Revisiting Variable Ordering for Real Quantifier Elimination using Machine Learning
John Hester
Briland Hitaj
Grant Passmore
S. Owre
N. Shankar
Eric Yeh
35
1
0
27 Feb 2023
A machine learning based software pipeline to pick the variable ordering
  for algorithms with polynomial inputs
A machine learning based software pipeline to pick the variable ordering for algorithms with polynomial inputs
Dorian Florescu
Matthew England
10
7
0
22 May 2020
Improved cross-validation for classifiers that make algorithmic choices
  to minimise runtime without compromising output correctness
Improved cross-validation for classifiers that make algorithmic choices to minimise runtime without compromising output correctness
Dorian Florescu
Matthew England
39
12
0
28 Nov 2019
Algorithmically generating new algebraic features of polynomial systems
  for machine learning
Algorithmically generating new algebraic features of polynomial systems for machine learning
Dorian Florescu
Matthew England
29
19
0
03 Jun 2019
1