Black-box policy search with probabilistic programs

In this work we show how to represent policies as programs: that is, as stochastic simulators with tunable parameters. To learn the parameters of such policies we develop connections between black box variational inference and existing policy search approaches. We then explain how such learning can...

Повний опис

Бібліографічні деталі
Автори: Van De Meent, J, Paige, B, Tolpin, D, Wood, F
Формат: Conference item
Опубліковано: Journal of Machine Learning Research 2016