Boosting Structured Prediction for Imitation Learning

Bagnell, J. A., Chestnutt, Joel, Bradley, David M., Ratliff, Nathan D.

Neural Information Processing Systems 

The Maximum Margin Planning (MMP) (Ratliff et al., 2006) algorithm solves imitation learning problems by learning linear mappings from features to cost functions in a planning domain. The learned policy is the result of minimum-cost planning using these cost functions. These mappings are chosen so that example policies (or trajectories) given by a teacher appear to be lower cost (with a lossscaled margin) than any other policy for a given planning domain.

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