Efficient Algorithms for Non-convex Isotonic Regression through Submodular Optimization
We consider the minimization of submodular functions subject to ordering constraints. We show that this optimization problem can be cast as a convex optimization problem on a space of uni-dimensional measures, with ordering constraints corresponding to first-order stochastic dominance. We propose new discretization schemes that lead to simple and efficient algorithms based on zero-th, first, or higher order oracles; these algorithms also lead to improvements without isotonic constraints. Finally, our experiments show that non-convex loss functions can be much more robust to outliers for isotonic regression, while still leading to an efficient optimization problem.
Jul-28-2017
- Country:
- Europe > France > Île-de-France > Paris > Paris (0.04)
- Genre:
- Research Report (0.82)
- Technology: