A unified theory for the origin of grid cells through the lens of pattern formation
Sorscher, Ben, Mel, Gabriel, Ganguli, Surya, Ocko, Samuel
–Neural Information Processing Systems
There are currently two seemingly unrelated frameworks for understanding these patterns. Mechanistic models account for hexagonal firing fields as the result of pattern-forming dynamics in a recurrent neural network with hand-tuned center-surround connectivity. Normative models specify a neural architecture, a learning rule, and a navigational task, and observe that grid-like firing fields emerge due to the constraints of solving this task. Here we provide an analytic theory that unifies the two perspectives by casting the learning dynamics of neural networks trained on navigational tasks as a pattern forming dynamical system. This theory provides insight into the optimal solutions of diverse formulations of the normative task, and shows that symmetries in the representation of space correctly predict the structure of learned firing fields in trained neural networks.
Neural Information Processing Systems
Mar-19-2020, 00:46:34 GMT
- Technology: