LGNEMLFeb 19, 2021

A theory of capacity and sparse neural encoding

arXiv:2102.10148v12 citations
Originality Highly original
AI Analysis

This provides a theoretical foundation for understanding memory capacity in sparse neural networks, relevant to computational neuroscience and machine learning.

The paper tackles the problem of storing K input-target associations in sparse neural maps, proving that sparsity in the target layer paradoxically increases storage capacity, with K undergoing a phase transition.

Motivated by biological considerations, we study sparse neural maps from an input layer to a target layer with sparse activity, and specifically the problem of storing $K$ input-target associations $(x,y)$, or memories, when the target vectors $y$ are sparse. We mathematically prove that $K$ undergoes a phase transition and that in general, and somewhat paradoxically, sparsity in the target layers increases the storage capacity of the map. The target vectors can be chosen arbitrarily, including in random fashion, and the memories can be both encoded and decoded by networks trained using local learning rules, including the simple Hebb rule. These results are robust under a variety of statistical assumptions on the data. The proofs rely on elegant properties of random polytopes and sub-gaussian random vector variables. Open problems and connections to capacity theories and polynomial threshold maps are discussed.

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