GrASP: Gradient-Based Affordance Selection for Planning
Veeriah, Vivek, Zheng, Zeyu, Lewis, Richard, Singh, Satinder
–arXiv.org Artificial Intelligence
Planning with a learned model is arguably a key component of intelligence. There are several challenges in realizing such a component in large-scale reinforcement learning (RL) problems. One such challenge is dealing effectively with continuous action spaces when using tree-search planning (e.g., it is not feasible to consider every action even at just the root node of the tree). In this paper we present a method for selecting affordances useful for planning -- for learning which small number of actions/options from a continuous space of actions/options to consider in the tree-expansion process during planning. We consider affordances that are goal-and-state-conditional mappings to actions/options as well as unconditional affordances that simply select actions/options available in all states. Our selection method is gradient based: we compute gradients through the planning procedure to update the parameters of the function that represents affordances. Our empirical work shows that it is feasible to learn to select both primitive-action and option affordances, and that simultaneously learning to select affordances and planning with a learned value-equivalent model can outperform model-free RL.
arXiv.org Artificial Intelligence
Feb-7-2022
- Genre:
- Research Report (1.00)
- Technology:
- Information Technology > Artificial Intelligence
- Machine Learning > Reinforcement Learning (0.67)
- Representation & Reasoning
- Agents (0.93)
- Planning & Scheduling (0.68)
- Search (0.66)
- Robots (0.93)
- Information Technology > Artificial Intelligence