Introducing Meta Reward Learning
Reinforcement learning has been at the center of some of the biggest artificial intelligence(AI) breakthroughs of the last five years. In mastering games like Go, Quake III or StarCraft, reinforcement learning models demonstrated that they can surpass human performance and create unique long-term strategies never explored before. Part of the magic of reinforcement learning relies on regularly rewarding the agents for actions that lead to a better outcome. That models works great in dense reward environments like games in which almost every action correspond to a specific feedback but what happens if that feedback is not available? In reinforcement learning this is known as sparse rewards environments and, unfortunately, it's a representation of most real-world scenarios.
Mar-9-2020, 09:16:57 GMT
- Country:
- Africa > Nigeria (0.05)
- North America > United States (0.05)
- Industry:
- Leisure & Entertainment > Games (0.36)
- Technology: