Distributional Active Inference
About
Optimal control of complex environments with robotic systems faces two complementary and intertwined challenges: efficient organization of sensory state information and far-sighted action planning. Because the reinforcement learning framework addresses only the latter, it tends to deliver sample-inefficient solutions. Active inference is the state-of-the-art process theory that explains how biological brains handle this dual problem. However, its applications to artificial intelligence have thus far been limited to extensions of existing model-based approaches. We present a formal abstraction of reinforcement learning algorithms that spans model-based, distributional, and model-free approaches. This abstraction seamlessly integrates active inference into the distributional reinforcement learning framework, making its performance advantages accessible without transition dynamics modeling.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Continuous Control | DeepMind Control Suite Vision Quadruped-Run (test) | AULC676.4 | 5 | |
| Continuous Control | DMC Vision Walker-Run (test) | AULC659.7 | 5 | |
| Continuous Control | DMC Vision Reacher-Hard (test) | AULC807.2 | 5 | |
| Continuous Control | DeepMind Control Suite Vision Cheetah-Run (test) | AULC756.5 | 5 | |
| Continuous Control | DMC Vision Finger-Turn Hard (test) | AULC580.2 | 5 | |
| Locomotion | DeepMind Control suite Dog-Walk | AULC575.8 | 4 | |
| Locomotion | DeepMind Control suite Dog-Trot | AULC368.9 | 4 | |
| Locomotion | DeepMind Control suite Dog-Run | AULC214.4 | 4 | |
| Locomotion | DeepMind Control suite Quadruped-Run | AULC720.9 | 4 | |
| Locomotion | DeepMind Control Suite Walker Run | AULC638 | 4 |