Browsing by Subject "Modular inverse reinforcement learning"
Now showing 1 - 1 of 1
- Results Per Page
- Sort Options
Item Parameterized modular inverse reinforcement learning(2015-08) Zhang, Shun, 1990-; Ballard, Dana H. (Dana Harry), 1946-; Stone, Peter HReinforcement learning and inverse reinforcement learning can be used to model and understand human behaviors. However, due to the curse of dimensionality, their use as a model for human behavior has been limited. Inspired by observed natural behaviors, one approach is to decompose complex tasks into independent sub-tasks, or modules. Using this approach, we extended earlier work on modular inverse reinforcement learning, and developed what we called a parameterized modular inverse reinforcement learning algorithm. We first demonstrate the correctness and efficiency of our algorithm in a simulated navigation task. We then show that our algorithm is able to estimate a reward function and discount factor for real human navigation behaviors in a virtual environment, and train an agent that imitates the behavior of human subjects.