Supported by recent computational studies, there is increasing evidence that a wide range of neuronal responses can be understood as an emergent property of nonnegative sparse coding (NSC), an efficient population coding scheme based on dimensionality reduction and sparsity constraints. We review evidence that NSC might be employed by sensory areas to efficiently encode external stimulus spaces, by some associative areas to conjunctively represent multiple behaviorally relevant variables, and possibly by the basal ganglia to coordinate movement. In addition, NSC might provide a useful theoretical framework under which to understand the often complex and nonintuitive response properties of neurons in other brain areas. Although NSC might not apply to all brain areas (for example, motor or executive function areas) the success of NSC-based models, especially in sensory areas, warrants further investigation for neural correlates in other regions.
Two new papers on how the brain efficiently represents information:
— CARL (@UCI_CARL) July 5, 2019
"Neural correlates of sparse coding and dimensionality reduction” @FrontNeurosci "Making BREAD: Biomimetic Strategies for Artificial Intelligence Now and in the Future” @PLOSCompBiol https://t.co/WLZLbnMwSB