NEAILGJun 27, 2022

Distinguishing Learning Rules with Brain Machine Interfaces

arXiv:2206.13448v211 citationsh-index: 4
Originality Incremental advance
AI Analysis

This work addresses a fundamental challenge in neuroscience for researchers seeking to understand learning mechanisms, though it is incremental as it builds on existing theoretical frameworks.

The paper tackled the problem of distinguishing between biologically plausible supervised and reinforcement learning rules in the brain by deriving a metric based on network activity changes during learning, and demonstrated its feasibility in simulated brain-machine interface experiments.

Despite extensive theoretical work on biologically plausible learning rules, clear evidence about whether and how such rules are implemented in the brain has been difficult to obtain. We consider biologically plausible supervised- and reinforcement-learning rules and ask whether changes in network activity during learning can be used to determine which learning rule is being used. Supervised learning requires a credit-assignment model estimating the mapping from neural activity to behavior, and, in a biological organism, this model will inevitably be an imperfect approximation of the ideal mapping, leading to a bias in the direction of the weight updates relative to the true gradient. Reinforcement learning, on the other hand, requires no credit-assignment model and tends to make weight updates following the true gradient direction. We derive a metric to distinguish between learning rules by observing changes in the network activity during learning, given that the mapping from brain to behavior is known by the experimenter. Because brain-machine interface (BMI) experiments allow for precise knowledge of this mapping, we model a cursor-control BMI task using recurrent neural networks, showing that learning rules can be distinguished in simulated experiments using only observations that a neuroscience experimenter would plausibly have access to.

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