Behavior Is Everything: Towards Representing Concepts with Sensorimotor Contingencies
Hay, Nicholas (Vicarious AI) | Stark, Michael (Vicarious AI) | Schlegel, Alexander (Vicarious AI) | Wendelken, Carter (Vicarious AI) | Park, Dennis (Vicarious AI) | Purdy, Eric (Vicarious AI) | Silver, Tom (Vicarious AI) | Phoenix, D. Scott (Vicarious AI) | George, Dileep (Vicarious AI)
AI has seen remarkable progress in recent years, due to a switch from hand-designed shallow representations, to learned deep representations. While these methods excel with plentiful training data, they are still far from the human ability to learn concepts from just a few examples by reusing previously learned conceptual knowledge in new contexts. We argue that this gap might come from a fundamental misalignment between human and typical AI representations: while the former are grounded in rich sensorimotor experience, the latter are typically passive and limited to a few modalities such as vision and text. We take a step towards closing this gap by proposing an interactive, behavior-based model that represents concepts using sensorimotor contingencies grounded in an agent's experience. On a novel conceptual learning and benchmark suite, we demonstrate that conceptually meaningful behaviors can be learned, given supervision via training curricula.
Feb-8-2018
- Country:
- North America > United States > California > San Francisco County > San Francisco (0.14)
- Industry:
- Education (0.46)
- Technology: