Using Machine Learning to Discover Theories of Everything

ORAL

Abstract

The great difficulty with a ``theory of everything'' is that it needs to model complex, non-linear relationships between variables. I will present the nuts and bolts of a machine learning framework that uses similarity kernels to transform the non-linear problem into a tractable, linear one. Inasmuch as the method relies crucially on mathematical representations, we investigate it by example: predicting the properties of all possible materials. The key idea is to construct a continuous, smooth, differentiable representation with appropriate invariances under available symmetries.

*Work supported under: ONR (MURI N00014-13-1-0635)

Authors

  • Conrad W. Rosenbrock

    • Brigham Young University
  • Gus L. W. Hart

    • Brigham Young University
    • Brigham Young Univ - Provo
    • Brigham Young University - Provo