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Machine-learning mathematical structures

Yang‐Hui He

2022International Journal of Data Science in the Mathematical Sciences24 citationsDOI

Abstract

We review, for a general audience, a variety of recent experiments on extracting structure from machine-learning mathematical data that have been compiled over the years. Focusing on supervised machine-learning on labeled data from different fields ranging from geometry to representation theory, from combinatorics to number theory, we present a comparative study of the accuracies on different problems. The paradigm should be useful for conjecture formulation, finding more efficient methods of computation, as well as probing into certain hierarchy of structures in mathematics. Based on various colloquia, seminars and conference talks in 2020, this is a contribution to the launch of the journal “Data Science in the Mathematical Sciences.”

Topics & Concepts

ConjectureHierarchyVariety (cybernetics)Computer scienceArtificial intelligenceRepresentation (politics)Mathematical theoryMathematical structureComputationTheoretical computer scienceMachine learningMathematicsAlgorithmMathematics educationPure mathematicsPhysicsPolitical scienceMarket economyEconomicsQuantum mechanicsLawPoliticsTopological and Geometric Data AnalysisPolynomial and algebraic computationDigital Image Processing Techniques
Machine-learning mathematical structures | Litcius