In this article, we work towards the goal of developing agents that can learn
to act in complex worlds. We develop a probabilistic, relational planning rule
representation that compactly models noisy, nondeterministic action effects,
and show how such rules can be effectively learned. Through experiments in
simple planning domains and a 3D simulated blocks world with realistic physics,
we demonstrate that this learning algorithm allows agents to effectively model
world dynamics