Many environments contain numerous available niches of variable value, e...
Multi-agent artificial intelligence research promises a path to develop
...
Existing evaluation suites for multi-agent reinforcement learning (MARL)...
The challenge of developing powerful and general Reinforcement Learning ...
Here we explore a new algorithmic framework for multi-agent reinforcemen...
We study the problem of cooperative multi-agent reinforcement learning w...
Being able to reason in an environment with a large number of discrete
a...
Many real-world problems come with action spaces represented as feature
...
Philosophers writing about the ravens paradox often note that Nicod's
Co...
Bayesian sequence prediction is a simple technique for predicting future...
We use optimism to introduce generic asymptotically optimal reinforcemen...
We identify principles characterizing Solomonoff Induction by demands on...
Following a recent surge in using history-based methods for resolving
pe...