GM

Guilherme Maeda

2 records found

Authored

Robot learning problems are limited by physical constraints, which make learning successful policies for complex motor skills on real systems unfeasible. Some reinforcement learning methods, like Policy Search, offer stable convergence toward locally optimal solutions, whereas in ...
Machine Learning methods applied to decision making problems with real robots usually suffer from slow convergence due to the dimensionality of the search and difficulties in the reward design. Interactive Machine Learning (IML) or Learning from Demonstrations (LfD) methods are u ...