Paper ID: 2311.13544

Piecewise Polynomial Regression of Tame Functions via Integer Programming

Gilles Bareilles, Johannes Aspman, Jiri Nemecek, Jakub Marecek

Tame functions are a class of nonsmooth, nonconvex functions, which feature in a wide range of applications: functions encountered in the training of deep neural networks with all common activations, value functions of mixed-integer programs, or wave functions of small molecules. We consider approximating tame functions with piecewise polynomial functions. We bound the quality of approximation of a tame function by a piecewise polynomial function with a given number of segments on any full-dimensional cube. We also present the first mixed-integer programming formulation of piecewise polynomial regression. Together, these can be used to estimate tame functions. We demonstrate promising computational results.

Submitted: Nov 22, 2023