TR2015-133
Learning Positive Functions in a Hilbert Space
-
- "Learning Positive Functions in a Hilbert Space", NIPS Workshop on Optimization for Machine Learning (OPT), December 2015.BibTeX TR2015-133 PDF
- @inproceedings{Bagnell2015dec,
- author = {Bagnell, J.A. and Farahmand, A.-M.},
- title = {Learning Positive Functions in a Hilbert Space},
- booktitle = {NIPS Workshop on Optimization for Machine Learning (OPT)},
- year = 2015,
- month = dec,
- url = {https://www.merl.com/publications/TR2015-133}
- }
,
- "Learning Positive Functions in a Hilbert Space", NIPS Workshop on Optimization for Machine Learning (OPT), December 2015.
-
Research Areas:
Abstract:
We develop a method for learning positive functions by optimizing over SoSK, a reproducing kernel Hilbert space subject to a Sum-of-Squares (SoS) constraint. This constraint ensures that only nonnegative functions are learned. We establish a new representer theorem that demonstrates that the regularized convex loss minimization subject to the SoS constraint has a unique solution and moreover, its solution lies on a finite dimensional subspace of an RKHS that is defined by data. Furthermore, we show how this optimization problem can be formulated as a semidefinite program. We conclude with an example of learning such functions.