under uncertainty. An agent finds a suitable policy through a reward function by interacting
with a dynamic environment. However, for complex and large problems it is very difficult to
specify and tune the reward function. Inverse Reinforcement Learning (IRL) may mitigate
this problem by learning the reward function through expert demonstrations. This work
exploits an IRL method named Max-Margin Algorithm (MMA) to learn the reward function for …